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South African Journal of Science

versión On-line ISSN 1996-7489
versión impresa ISSN 0038-2353

S. Afr. j. sci. vol.118 no.9-10 Pretoria sep./oct. 2022

http://dx.doi.org/10.17159/sajs.2022/11703 

RESEARCH ARTICLES

 

Social network analysis of a landscape-scale conservation initiative in South Africa

 

 

Samantha Mc Culloch-JonesI; Peter NovellieI; Dirk J. RouxI, II; Bianca CurrieI

ISustainability Research Unit, Nelson Mandela University, George, South Africa
IIScientific Services, South African National Parks, George, South Africa

Correspondence

 

 


ABSTRACT

Assessment of social relations, including social network analysis, is central to understanding collaborative processes for environmental decision-making and action. The capacity of network role players to learn and adapt appropriately to uncertainty and change is a critical determinant of the resilience of social-ecological systems. Poor social network structure can predispose failure. In this study, we used social network analysis to explore learning capacity and network resilience in a multi-authority conservation initiative on the West Coast of South Africa (Dassenberg Coastal Catchment Partnership). Our analysis focused on structural variables for network learning and resilience, namely connectivity, heterogeneity, and centrality. The governance network was found to be structurally connected, with the interaction between heterogeneous organisations and sectors, and centralised around a core group of actors. The network had good structural features to enable learning. However, the high level of centrality, and dependence on a small number of core actors, rendered the network potentially vulnerable to dealing with complex challenges. We recommend that core actors (1) reflect on their core functions and whether the network can absorb these functions if they were to leave and (2) tap into the knowledge potential of actors on the network periphery or invite new actors to the network when dealing with complex challenges. This may require the network to diverge into decentralised subgroups to deal with complex issues. We further suggest that the Dassenberg Coastal Catchment Partnership network incorporate social network research with qualitative monitoring into a long-term plan to monitor the movement and influence of actors as the initiative evolves.
SIGNIFICANCE:
This study illustrates how social network analysis can help researchers, public-sector organisations, and donor agencies to monitor the structural features of governance networks that enable or disable learning and resilience within landscape-scale conservation initiatives. Our results illustrate how social network analysis can assist public-sector actors to reflect on their roles and whether there is redundant competency within the network to maintain its resilience

Keywords: Dassenberg Coastal Catchment Partnership, environmental governance, landscape-scale conservation, social network analysis, learning capacity, network resilience


 

 

Introduction

The challenges associated with navigating complex social-ecological systems require governance regimes to be collaborative and adaptive.1,2 Collaborative governance is an arrangement in which one or more public-sector agencies engage non-state actors in collective decision-making processes.3 This takes place through formally organised forums, focusing on decisions, made by consensus, that affect public policy and management. Adaptive governance is a flexible, learning-based, collaborative approach in which state and non-state actors engage in decision-making, at multiple interconnected levels.4 Operationalised through adaptive co-management, adaptive governance promotes resilient social-ecological systems by encouraging adaptation and transformation, whilst maintaining core functions.

Importantly, these governance regimes need to promote cross-scale networks of interaction and learning between multiple sectors of society, e.g. government departments, the private sector and civil society groups.5,6 While learning typically takes place within an individual7, learning required for environmental governance must occur at larger social scales, e.g. organisations and institutions6,8. Cross-scale, co-learning is crucial for adaptive governance because it taps into the stored social memory of networks9,10, enhancing the adaptive capacity of governance regimes by providing options for response through periods of change and uncertainty10,11. Decision-making in governance networks is therefore assumed to be only as effective as the relational links that facilitate communication between actors within and between networks.2

Analysing social relations has therefore come to the forefront of assessing collaborative governance arrangements.12,13 Social network analysis (SNA) is an approach that examines patterns of interaction and communication between actors and entities. Through this approach, data are systematically analysed, using mathematical tools derived from graph theory, to assess the configuration of social ties between actors.14 The distribution of these configurations is theorised to have implications for the resilience and learning capacity of governance regimes.10,12,15,16 While network structure alone does not fully explain the success or failure of a governance regime, poor structure can predispose failure.2,16,17 Therefore analysing social network structures can assist governance regimes in uncovering factors hindering success.

Resilience in social networks has been described by Newig et al.15(p.6) as 'the capacity of the network to remain intact in its core functions when subject to pressure or sudden change'. Resilient governance networks therefore need redundancy of both competencies and network relations, as these make the network less vulnerable to sudden change.15 Therefore, for co-management to promote resilience in social-ecological systems, governance networks should not rely solely on one administrative entity but should seek redundancy in core functions amongst diverse entities.17

While there are no panaceas, different structural properties can enable and/or disable networks.16,18 For example, networks exhibiting a high degree of centralisation are linked to a greater likelihood of building consensus and coordinating collective action.17,19 On the other hand, high degrees of centralisation in networks that lack actor heterogeneity have also been found to inhibit the capacity of long-term planning and the ability to manage complex tasks in future stages.16,20 A high degree of centralisation can be beneficial, depending on the life stage of the initiative.17,21 By taking a social network perspective, it is possible to examine the structural configurations of governance networks, to gain insight into how the relational structure may enable or hinder the network, potentially identifying opportunities for improvement.13,22 These measures are, however, context dependent and interpretations regarding their influence should be based on several social network measures to obtain a comprehensive understanding.23

A particular area of governance to which SNA can be applied is landscape-scale approaches to conservation. Landscape-scale conservation is an ecosystem-based management approach promoting connectivity, integrity, and heterogeneity while simultaneously attempting to reconcile trade-offs between conservation and development.2,24 Spanning traditional protected area boundaries and land uses, landscape-scale conservation recognises the potential contribution of other systems - such as farmlands or urban areas - towards achieving conservation targets. These integrated landscape-scale conservation initiatives represent social-ecological systems that are heterogeneous and multifunctional, encompassing multiple ecosystems services, land uses, stakeholders, organisations, and institutions.24 The inherent multiplicity of stakeholders, ecosystems, land uses, organisations and institutions poses challenges for governance. Effective co-learning is necessary for navigating complexity and achieving desirable coordinated action.8 However, many environmental governance systems lack the mechanisms or capacity for co-learning and often repeat past mistakes.8,25 SNA allows us to explore the structural configuration of social relationships within governance regimes to gain insight into the network's capacity to foster collaboration and adaptation.

In this study, we used SNA to explore the structural aspects that facilitate learning and network resilience for a landscape conservation initiative in the West Coast of South Africa: the Dassenberg Coastal Catchment Partnership (DCCP). We selected three network variables (connectivity, heterogeneity, and centrality) to assess capacity for learning and network resilience.

 

Overview of selected network variables

While each of the three selected measures - connectivity, heterogeneity, and centrality - has advantages and disadvantages for learning and network resilience (Table 1), they may also affect one another.23 Furthermore there are no standard criteria or 'cut-off-values' for any of these measures to be considered high or low. Interpretations are context dependent and should be based on a comprehensive understanding of all the selected network measures.23

 

 

Network connectivity

Connectivity within social networks is a function of the number of social ties between actors or nodes within the network.26,27 The basic assumption is that the more relational ties there are, the greater the potential for building social capital within a network.26 Social capital refers to relations of trust and reciprocity, with common rules, norms and sanctions present.10 Social capital thus results in feelings of belonging, trust, and group identity.2 This promotes the transfer of information, leading to learning that supports greater legitimacy for co-management and improved management practices.22 Structurally, cohesive networks lack clearly distinguishable subgroups, as they are connected through many strong and redundant ties.13 These ties have also been referred to as bonding ties and linked to bonding social capital.16,28 Bonding social capital plays a key role in building trust and developing a shared understanding and group identity. Ties that link subgroups are referred to as bridging ties and promote bridging social capital.13,16 These ties are especially important for enabling access to new information and facilitating the diffusion of innovation.28

Suggested measures for network connectivity include network density and reachability.27,29 Network density is defined as the extent to which actors in the network are connected to one another, providing pathways for information transfer between actors.27 Small networks generally exhibit high network density as it is easier to maintain relationships and transfer information within small groups.15 Large networks are likely to exhibit less density because of the quadratically growing number of possible relations. Thus small networks (between 8 and 15 actors) have been found to be more effective for co-learning30, although learning may still effectively occur in large networks that exhibit small cohesive subgroups through core-periphery structures13,15.

Reachability refers to the capacity of all actors within a network to have access to each other.27 It becomes important to consider in large networks, because information can become distorted when transmitted by many actors. Highly connected networks have many relational ties between actors and tend to exhibit high density and high reachability. Networks with high density and reachability are cohesive and potentially resilient to the loss of nodes as there is likely redundancy found within the social ties of actors who can fulfil similar roles.17,27 While having a high level of connectivity is preferable, networks must foster ties with heterogeneous actors to reduce the risk of knowledge becoming insular.20,31 It is therefore important to consider the interdependent nature of network connectivity and heterogeneity when assessing learning capacity and network resilience.

Network heterogeneity

According to human communication theory, information transfer and knowledge development mostly occur amongst like-minded or similar individuals.7 Homophily is the degree to which two actors have similar attributes.15,32 Homophily can be advantageous in that information can be transferred more quickly, as actors have similar experiences and understanding. Complex social-ecological challenges, however, require governance networks with a certain level of heterogeneity.5,33,34 Diversity of organisations and sectors in a network reflects cross-boundary and cross-scale interactions, indicating access to diverse knowledge and resources, as well as the potential for diversity of practices and experimentation in the landscape.2,10 Therefore, by incorporating heterogeneous actors from different sectors, organisations and institutions, governance networks will have options available for responding to change and disturbance, thereby improving the potential for learning and innovation and overall social-ecological systems resilience.

Heterogeneity in networks, however, can come with challenges due to the diverging priorities, perceptions, terminologies and needs among diverse actors.2,17 Therefore, when managing networks for knowledge diversity, the focus should not be simply to bring heterogeneous people together. Rather, the focus should be on bringing a set of diverse actors together with knowledge relevant to the issue at hand, and bridging their differences through collective learning processes and the development of social capital.2,35 While actors should represent different disciplines, perspectives and contexts, there should be some consensus toward a common goal.24 While these actors may differ in opinion, such variations are likely to generate more ideas and creative solutions.7 The challenge is to balance knowledge diversity, to increase the potential for acquiring new knowledge, with knowledge overlap to enable effective coordination and communication.22,35 When managed effectively, diversity increases the opportunities for creativity, innovation and resilience.5,33 When managed inappropriately, it can lead to inefficiency, dissatisfaction, major conflict and even collapse of decision-making and coordinating action.2

Network centralisation

Network centralisation considers the distribution of social ties between actors within a network, as well as the structural importance of actors depending on where within the network they are located. A highly centralised network is characterised by one or few central actors which are tied to the majority of actors within the network.26 Actors found in central positions are high ranking as they have a significantly higher-than-average number of ties and are considered well connected and influential within the network.21,27 Centralised networks have been positively correlated with collective action, due to the potential of central actors to act as information hubs, prioritise and share information, and coordinate activities.17 These networks are also seen as more accountable, as central actors can be held responsible to some degree.27

While centralised networks are good for information transfer and collective action, they are less appropriate for dealing with complex problems.13,20 The over-reliance on central actors can reduce the diversity of representative information and lead to insular thinking.13,31 Furthermore, centralised networks are vulnerable to the loss of, or dysfunctionality of, central actors. Actors that occupy these positions can have a positive and negative impact on governance outcomes. There are several metrics of centrality, including whole network measures and actor-level centrality measures.

 

Case study

The Dassenberg Coastal Catchment Partnership (DCCP) is a landscape-scale environmental stewardship initiative, falling within the Cape Floristic Biome in the West Coast region of South Africa (Figure 1). With a total area of 34 000 ha, landownership consists of 39% state owned, 29% privately owned, 20% community owned, and 12% land owned by the City of Cape Town Municipality (Figure 1).36 With assistance from the Global Environmental Facility, the City of Cape Town Municipality - Biodiversity Management Department (CCT-BM) and CapeNature aim to proclaim 12 000 ha of the DCCP area under some form of protected area status.

Together the CCT-BM and CapeNature are driving the project by providing knowledge and resources for protected area expansion and implementation of biodiversity conservation. The CCT-BM is a relatively small department within the local municipality responsible for managing the green spaces and nature reserve that fall within the City of Cape Town municipal domain.37 CapeNature is a provincial conservation organisation responsible for management of provincial nature reserves within the Western Cape Province.38 The funding obtained from the Global Environmental Facility was utilised for various staff appointments such as a landscape coordinator, legal consultants, and conservation planning facilitators as well as for capacity development and various biodiversity management implementation costs.

The DCCP was identified as having conservation significance in terms of biodiversity protection and climate change mitigation.36 It contains the most extensive, ecologically functioning portion of endangered lowland fynbos habitats in the Western Cape, with up to 60% of the plant species only occurring within a 50-km radius. The area hosts a coastal aquifer and recharge zone which is responsible for supplying neighbouring communities with 40% of their fresh water. The coastal aquifer is a critical natural resource considering that climate change predictions for the Western Cape suggest that the area will become increasingly water stressed, as was evidenced by the 2017/2018 'day zero' drought in Cape Town.39 Furthermore the cost of replacing the water that this critical ecological infrastructure provides is estimated to be billions of rands. Ecological infrastructure is the nature-based equivalent of built infrastructure, providing society with services such as naturally filtered fresh water.40 It can support, sustain, or even substitute built infrastructure.

The DCCP initiative is reacting to several drivers including multilateral treaties such as the Convention on Biological Diversity Aichi target 1141, and national policies such as the National Protected Area Expansion Strategy42 and the National Climate Change Adaptation Strategy43. The focus is on using an ecosystem-based approach to address multiple threats and promote conservation of biodiversity to secure critical ecological infrastructure and increase ecosystem resilience to climate change.36

Due to the high cost of land acquisition and declining budgets of conservation agencies, landscape conservation was promoted through biodiversity stewardship agreements with private and communal landowners.36 Biodiversity stewardship arrangements range from non-binding to long-term, formally declared protected areas.44 Depending on the contract between landowners and conservation agencies, the agreements contain incentives ranging from technical advice and biodiversity supportive management (e.g. alien clearing and ecological fire management), to tax incentives for the highest levels of protected area status. The protected area expansion project is focused on promoting and coordinating cost-effective and efficient co-management for a network of protected areas at a landscape scale.

 

Methods

When embarking on a SNA it is important to define the boundary of the network studied.13,14 As is typical of governance networks elsewhere3,17, the DCCP network comprises actors that represent governmental, non-governmental and private organisations and citizen groups. Based on Sandström and Rova21, we defined the governance network boundary to be those actors who actively represented their organisations in designing the rules for co-management within the DCCP. We therefore conducted a social network survey, using a technique similar to that described in Plummer et al.45, with managers and key individuals who were identified as being actively involved in the governance of the DCCP.

Through participation in planning workshops during September and October of 2017, we identified 15 managers who were actively involved in the governance of the DCCP. Of these, 10 actors accepted our invitation to participate in a social network survey. Ethics approval for this study was granted by the Human Research Ethics Committee of Nelson Mandela University (REF: H17-SCI-NRM-007) and informed consent was obtained from all participants.

The participants were interviewed individually and asked to identify actors from the original list of 15 with whom they (1) exchanged information and (2) coordinated action on behalf of the DCCP initiative. Information sharing included collating monitoring and evaluation data, as well as one-on-one and group engagements that promote collective decision-making and action. Examples of coordinated actions included invasive alien plant control, conservation compliance and law enforcement operations, and stakeholder engagement. The actors were then also asked to nominate any other actors, not included on the list, with whom they shared information and coordinated action on behalf of the DCCP initiative. These nominees were also invited to participate in the study and were asked the same series of questions. Consistent with a snowball sampling technique46, sampling was halted when no new important actors were nominated.

Through this process, a total of 34 actors were identified of which 25 (74%) agreed to participate in the study. All interviews took place between February and November 2018. Each of the 34 actors was assigned a node identity number. The data were then captured as an adjacency matrix in an Excel spreadsheet, with 34 columns and 34 rows. Every confirmed relationship between actors was marked as a 1, with no relationship equal to 0 (Supplementary table 1). The organisation and sector affiliations for each actor were noted. The data sets were analysed and visualised using social network software, UCINET 6 and Net Draw.14 To compensate for missing data (the actors who did not participate), it was necessary to symmetrise the adjacency matrix, using average actor responses as recommended by Borgatti et al.14 In the network, each node represents an actor, with the relationships between actors visualised as a link between the nodes.

Connectivity was assessed using measures for density and reachability.27,29 To assess reachability, network diameter and the number of components within the network were considered. Heterogeneity was assessed through node diversity and network homophily measures.21,32 Network centrality was assessed through the degree of network centralisation, a core-periphery structure, degree centrality and betweenness centrality.2,13,47 See Table 2 for more details of network measures.

The effect of the loss of key actors on network resilience was explored through node removal experiments. This procedure was performed by removing the nodes with the five highest degree centrality scores from the network one by one to determine how many relational ties for which these nodes were responsible.47 This procedure indicated the extent to which the loss of central actors would fragment the network. All the results were used to interpret the learning capacity and resilience of the DCCP network.

 

Results

Table 3 displays results from our analysis for network connectivity, heterogeneity and overall network centralisation. Core-periphery centrality results are displayed in Figure 2. Individual centrality measures can be found in Figure 2 and Table 4.

 

 

A total of 34 nodes with 454 ties were captured. This resulted in a density of 0.406, with network reachability consisting of one component with a diameter of three. In terms of heterogeneity, the actors represented 17 organisations from six sectors: local, provincial and national government; non-governmental organisations (NGOs); private landowners; and a local community property association (Table 3) (see Supplementary table 2 for details on the identified organisations). The homophily score indicated a weak-to-moderate level of heterogeneity between participating sectors (E-I=0.395) and a moderate level of heterogeneity between participating organisations (E-I=0.553).

The core group of actors participating in the governance of the DCCP were dominated by actors from CCT-BM and CapeNature but also included representatives from two NGOs (the Cape West Coast Biosphere Reserve and The Nature Conservancy - Water Fund), a private conservancy, and the local community property association (Table 4).

Degree and betweenness centrality measures were used to identify highly connected and influential actors within the DCCP co-management network (Figure 2 and Table 4). Actors 3, 15, 10, 4 and 2 had the top five highest degree centrality results, with Actors 3, 2 and 15 having notably high betweenness centrality scores. The node removal experiment indicated that the actors with the five highest degree centrality scores (Node ID 3, 15, 10, 4 and 2) were responsible for 50% of the relational ties of the network. Only by removing Node 2 were two peripheral actors isolated. This result was supported by the network centralisation score of 50.19% (Table 3).

 

Discussion

Our findings suggest that the DCCP governance network was structurally cohesive, with 40% of all social ties present, no fragmentation, and a maximum path length of three. The level of connectivity was thus conducive for information transfer and learning13,20, also suggesting potential for group identity and social capital within the network29. Heterogeneity measures showed diverse interactions between organisations and sectors, indicating cross-boundary and cross-scale information exchange. This finding shows that the network had access to diverse knowledge and resources, which would potentially reduce the likelihood of insular thinking.5,16 Furthermore, connected, heterogeneous networks have been found to exhibit increased experimentation21,33 which can potentially enhance their resilience and increase their capacity to deal with complex challenges.

The DCCP network was moderately centralised, as indicated by the network centralisation score (50.19%). Centralised governance networks have been found to be effective for knowledge sharing and solving simple challenges, and favourable for coordination.19,48 Highly centralised networks are held together by one node, and the loss of that node can lead to fragmentation and potentially the end of collaboration.27,29,48 However, our results distinguished a well-connected core group from loosely connected peripheral actors, typically observed in governance settings.47 Degree centrality results indicate that the network was centralised around five core actors. These actors were responsible for 50% of the relational ties within the network (Table 4). As to be expected, these actors represented CapeNature and CCT-BM. These organisations were important, not only for driving the initiative36 but also as bridging organisations responsible for strategically linking actors and providing arenas for the potential development of trust and shared understanding, and for facilitating conflict resolution and cross-scale collaboration.49

Actors 2, 3 and 15 were identified as important coordination points within the network, due to their betweenness centrality results. Actors 3 and 15 were landscape and stewardship coordinators for CapeNature and CCT-BM, respectively, and Actor 2 was CapeNature's regional manager for the area. Their positions within the network suggest that these three actors played a potentially important role as knowledge brokers47 and boundary spanners2, as they were responsible for channelling information and mobilising joint action between sectors, between organisations, and across scales. A SNA study by Angst et al.47, based on three actor networks around the water governance sector in Switzerland, identified central coordinators and peripheral connectors as key actor positions in governance networks. Central coordinators, such as Actors 3 and 15, were found to connect actors at the centre of the network and, as found in Angst et al.47, they were key for regularly facilitating coordinated action. Actor 2 played a role both as a central and as a peripheral connector. Peripheral connectors were noted as an important bridging role for integrating otherwise unconnected actors, thus facilitating access to new knowledge.47 Corresponding to Angst et al.47, we found that the central coordinators were occupied by public-sector actors who were involved in day-to-day operations. Peripheral coordinators, on the other hand, are often not involved in day-to-day operations and are often linked to external networks and knowledge.47 Angst et al.47 found that peripheral connectors were likely to be actors representing organisations at a higher jurisdictional level. However, in our study this was not necessarily so. The peripheral actor was part of one of the organisations responsible for central coordination, while also performing a higher jurisdictional role.

Centralised networks have often been found to be less effective for solving complex challenges17,27 and are more vulnerable to the loss of core actors27,48. Networks that cross scales and are heterogeneous were, however, noted as less vulnerable to these losses.17 Overall, network connectivity and centrality will aid decision-making by potentially lowering transaction costs and fostering learning through information transfer17,35, whilst diversity can promote access to other knowledge at multiple scales.50,51 The level of centralisation was also likely a function of the age of the network, which was newly initiated at the time of data collection. Higher levels of centralisation are often required at the start of collaborative governance initiatives to mobilise and coordinate actors.13,17,19 However, when engaging to resolve more complex issues, a less centralised network may be more favourable in the long term.11,12,52 Deliberate strategies may therefore be needed to evolve the network for various requirements.22,28 For instance, core actors may need to either engage more closely with peripheral actors or expand beyond the reach of this network and involve new actors.

Finally, we need to acknowledge an important limitation of this study. We established the existence of relationships within the governance network of the DCCP through SNA, but did not attempt to analyse the quality of those relationships. While beyond the scope of this research, the study would have benefitted from complementary qualitative enquiry methods to further establish the quality of the established relationships. Research has found that qualitative enquiry complements SNA by indicating how the network's structural properties link to human, social and physical capital.2,12,45 The value of our analysis lies in (1) highlighting network structural features that are hypothesised to enable or hinder learning capacity and resilience and (2) identifying opportunities for potential improvement through network governance.13,15,17

Another limitation was that - following the definition of Sandström and Rova21 - we engaged only with those actors who actively represented their organisations in designing the rules for co-management within DCCP. In effect, we favoured actors from formally organised groups, and omitted marginalised, landless stakeholders who were not represented by a recognised organisation. This precluded analysis of unequal capacity and unequal power relations - issues that are critical in the context of southern Africa.53

 

Conclusion

The DCCP network was found to have good potential for learning as it was connected, heterogeneous and centralised around a core group of actors. The network was found to be potentially resilient to the loss of its core actors due to the many redundant social ties. This is, however, dependent on the ability of other network actors to absorb such potential capacity loss and maintain core functionality. The DCCP core actors should therefore reflect on these capabilities and deliberate whether the network can absorb these functions or if mentorship would be needed to ensure network resilience. We recommend that the DCCP core actors also recognise the potential knowledge contribution of its peripheral actors and facilitate co-learning processes to address complex challenges within the landscape. This may require the network to diverge into decentralised task teams. We also recommend that new actors (including those not represented by organisations) with relevant, complementary knowledge, be invited into these sub-networks when needed.

Furthermore, we recommend that SNA be used to track changes in the DCCP network structure over time, to monitor the movement and influence of actors and the evolution of the governance network. Monitoring can enable the identification of structural advantages and disadvantages for the network's capacity for resilience and to learn. Supporting this with qualitative enquiry methods can further establish an evidence base to understand the causality of the network structural properties for learning and resilience. For example, interviews with the DCCP actors could establish the level of redundancy within the network to ascertain where vulnerability lies in terms of capacity and relational links. Given the relative newness of landscape-scale conservation initiatives, like the DCCP, we believe that this type of monitoring can provide useful information to guide governing networks towards more sustainable practices. We argue that learning capacity and network resilience are important components of adaptive governance, and thus underpin the likelihood of improved long-term success for landscape-scale conservation. It should therefore be a primary consideration for these types of initiatives to monitor and manage their networks accordingly to improve governance processes.

 

Acknowledgements

We gratefully acknowledge all the stakeholders who participated in this study, with special thanks to CapeNature and the City of Cape Town Biodiversity Management Branch for their continued support. This research was supported by scholarship funding from the UNDP-GEF Project: Improving Management Effectiveness of the Protected Area Network (UNDP PIMS ID:4943) and by the Nelson Mandela University.

 

Competing interests

We have no competing interests to declare.

 

Authors' contributions

S.M.-J. was responsible for the investigation, data analysis, conceptualisation, and writing and revising of the original manuscript. P.N. was responsible for supervision of early drafts and reviewing and editing. D.J.R. was responsible for funding acquisition, reviewing, and editing. B.C. was responsible for reviewing and editing. All authors agreed to the submission of the manuscript.

 

References

1.Gavin MC, McCarter J, Berkes F, Mead ATP, Sterling EJ, Tang R, et al. Effective biodiversity conservation requires dynamic, pluralistic, partnership-based approaches. Sustainability. 2018;10(6), Art. #1846. https://doi.org/10.3390/su10061846        [ Links ]

2.Bodin Ö, Sandström A, Crona B. Collaborative networks for effective ecosystem-based management: A set of working hypotheses. Policy Stud J. 2016;45(2):289-314. https://doi.org/10.1111/psj.12146        [ Links ]

3.Ansell C, Gash A. Collaborative governance in theory and practice. J Public Adm Res Theory. 2007;18(4):543-571. https://doi/10.1093/jopart/mum032        [ Links ]

4.Chaffin BC, Gosnell H, Cosens BA. A decade of adaptive governance scholarship: Synthesis and future directions. Ecol Soc. 2014;19(3), Art. #56. https://doi.org/10.5751/es-06824-190356        [ Links ]

5.Tengö M, Brondizio ES, Elmqvist T, Malmer P, Spierenburg M. Connecting diverse knowledge systems for enhanced ecosystem governance: The multiple evidence base approach. Ambio. 2014;43(5):579-591. https://doi.org/10.1007/s13280-014-0501-3        [ Links ]

6.Berkes F. Evolution of co-management: Role of knowledge generation, bridging organizations and social learning. J Environ Manag. 2008;90(5):1692-1702. http://dx.doi.org/10.1016/j.jenvman.2008.12.001        [ Links ]

7.Fazey I, Fazey JA., Fischer J, Sherren K, Warren J, Noss RF, et al. Adaptive capacity and learning to learn as leverage for social-ecological resilience. Front Ecol Environ. 2007;5(7):375-380. https://doi.org/10.1890/1540-9295(2007)5[375:ACALTL]2.0.CO;2        [ Links ]

8.Berkes F. Environmental governance for the anthropocene? Social-ecological systems, resilience, and collaborative learning. Sustainability. 2017;9(7), Art. #1232. https://doi.org/10.3390/su9071232        [ Links ]

9.Olsson P, Folke C, Galaz V, Hahn T, Schultz L. Enhancing the fit through adaptive co-management: Creating and maintaining bridging functions for matching scales in the Kristianstads Vattenrike Biosphere Reserve, Sweden. Ecol Soc. 2007;12(1):28. https://doi.org/10.5751/ES-01976-120128        [ Links ]

10.Hahn T, Schultz L, Folke C, Olsson P. Social networks as sources of resilience. In: Norberg J, Cumming GS, editors. Complexity theory for a sustainable future. New York: Columbia University Press; 2008. p. 119-148.         [ Links ]

11.Game ET, Meijaard E, Sheil D, Mcdonald-Madden E. Conservation in a wicked complex world; challenges and solutions. Conserv Lett. 2014;7(3):271-277. https://doi.org/10.1111/conl.12050        [ Links ]

12.Rockenbauch T, Sakdapolrak P. Social networks and the resilience of rural communities in the Global South: A critical review and conceptual reflections. Ecol Soc. 2017;22(1), Art. #10. https://doi.org/10.5751/es-09009-220110        [ Links ]

13.Bodin Ö, Crona BI. The role of social networks in natural resource governance: What relational patterns make a difference? Glob Environ Chang. 2009;19(3):366-374. https://doi.org/10.1016/j.gloenvcha.2009.05.002        [ Links ]

14.Borgatti SP, Everett MG, Johnson JC. Analyzing social networks. London: SAGE Publications; 2018.         [ Links ]

15.Newig J, Günther D, Pahl-Wostl C. Synapses in the network: Learning in governance networks in the context of environmental management. Ecol Soc. 2010;15(4), Art. #24. https://doi.org/10.5751/ES-03713-150424        [ Links ]

16.Barnes ML, Bodin Ö, Guerrero AM, McAllister RRJ, Alexander SM, Robins G. The social structural foundations of adaptation and transformation in social-ecological systems. Ecol Soc. 2017;22(4), Art. #16. https://doi.org/10.5751/ES-09769-220416        [ Links ]

17.Carlsson LG, Sandström AC. Network governance of the commons. Int J Commons. 2008;2(1):33-54. https://doi.org/10.18352/ijc.20        [ Links ]

18.Baird J, Plummer R, Bodin Ö. Collaborative governance for climate change adaptation in Canada: Experimenting with adaptive co-management. Reg Environ Chang. 2016;16(3):747-758. https://doi.org/10.1007/s10113-015-0790-5        [ Links ]

19.Lubell M, Robins G, Wang P. Network structure and institutional complexity in an ecology of water management games. Ecol Soc. 2014;19(4), Art. #23. https://doi.org/10.5751/es-06880-190423        [ Links ]

20.Bodin Ö, Norberg J. Information network topologies for enhanced local adaptive management. Environ Manag. 2005;35(2):175-193. https://doi.org/10.1007/s00267-004-0036-7        [ Links ]

21.Sandström A, Rova C. Adaptive co-management networks: A comparative analysis of two fishery conservation areas in Sweden. Ecol Soc. 2010;15(3), Art. #14. https://doi.org/10.5751/es-03531-150314        [ Links ]

22.Sandström A, Crona B, Bodin Ö. Legitimacy in co-management: The impact of preexisting structures, social networks and governance strategies. Environ Policy Gov. 2014;24(1):60-76. https://doi.org/10.1002/eet.1633        [ Links ]

23.Sandström AC, Rova CV. The network structure of adaptive governance - A single case study of a fish management area. Int J Commons. 2009;4(1):528. https://doi.org/10.18352/ijc.156        [ Links ]

24.Sayer J, Sunderland T, Ghazoul J, Pfund J-LJL, Sheil D, Meijaard E, et al. Ten principles for a landscape approach to reconciling agriculture, conservation, and other competing land uses. Proc Natl Acad Sci USA. 2013;110(21):8349-8356. https://doi.org/10.1073/pnas.1210595110        [ Links ]

25.Castella JC, Bourgoin J, Lestrelin G, Bouahom B. A model of the science-practice-policy interface in participatory land-use planning: Lessons from Laos. Landsc Ecol. 2014;29(6):1095-1107. https://doi.org/10.1007/s10980-014-0043-x        [ Links ]

26.Prell C, Hubacek K, Reed M. Stakeholder analysis and social network analysis in natural resource management. Soc Nat Resour. 2009;22:501-518. http://dx.doi.org/10.1080/08941920802199202        [ Links ]

27.Janssen M, Bodin O, Anderies J, Elmqvist T, Ernstson H, McAllister RRJ, et al. Toward a network perspective of the study of resilience in social-ecological systems. Ecol Soc. 2006;11(1), Art. #15. https://doi.org/10.5751/es-01462-110115        [ Links ]

28.Levy MA, Lubell MN. Innovation, cooperation, and the structure of three regional sustainable agriculture networks in California. Reg Environ Chang. 2018;18(4):1235-1246. https://doi.org/10.1007/s10113-017-1258-6        [ Links ]

29.Bodin Ö, Crona B, Ernstson H. Social networks in natural resource management: What is there to learn from a structural perspective? Ecol Soc. 2006;11(2), r2. https://doi.org/10.5751/ES-01808-1102r02        [ Links ]

30.Craps M. Social learning in river basin management. HarmoniCOP WP2 Reference Document. c2003 [cited 2021 Jul 08]. Available from: https://www.harmonicop.uni-osnabrueck.de/_files/_down/SocialLearning.pdf        [ Links ]

31.Roux D, Murray K, Wyk V. Learning to learn for social-ecological resilience: Balancing strategy options in public sector organizations. In: Burns M, Weaver A, editors. Exploring sustainability science: A southern African perspective. Stellenbosch: SUN Press; 2008. p. 599-625.         [ Links ]

32.Jarman D. Social network analysis and the hunt for homophily: Diversity and equality within festival communities. J Policy Res Tour Leis Events. 2018;10(2):117-133. https://doi.org/10.1080/19407963.2018.1414987        [ Links ]

33.Biggs R, Schlüter M, Biggs D, Bohensky EL, BurnSilver S, Cundill G, et al. Toward principles for enhancing the resilience of ecosystem services. Annu Rev Environ Resour. 2012;37(1):421-448. https://doi.org/10.1146/annurev-environ-051211-123836        [ Links ]

34.Folke C, Hahn T, Olsson P, Norberg J. Adaptive governance of social-ecological systems. Annu Rev Environ Resour. 2005;30(1):441-473. https://doi.org/10.1146/annurev.energy.30.050504.144511        [ Links ]

35.Erickson CL, Jacoby SM. The effect of employer networks on workplace innovation and training. Ind Labor Relations Rev. 2003;56(2):203. https://doi.org/10.2307/3590935        [ Links ]

36.Dorse C, Wood J, Scott D, Paterson A. The Dassenberg Coastal Catchment Partnership: A governance approach to promoting ecosystem-based adaptation and climate-resilient protected area expansion in Cape Town. In: Scott D, Davies H, New M, editors. Mainstreaming climate change in urban development: Lessons from Cape Town. Cape Town: UCT Press; 2019. https://doi.org/10.4324/9780203112656-16        [ Links ]

37.City of Cape Town. Environmental Management Department [webpage on the Internet]. c2021 [cited 2021 May 18]. Available from: https://www.capetown.gov.za/Departments/Environmental%20Management%20Department        [ Links ]

38.CapeNature. Dassen Coastal Complex Protected Area Management Plan: 2019-2029. Cape Town: Western Cape Nature Conservation Board; 2019. Available from: https://www.capenature.co.za/uploads/files/protected-area-management-plans/Dassen-Complex-PAMP_board-approved.pdf        [ Links ]

39.Welch C. Why Cape Town is running out of water, and the cities that are next. National Geographic. 5 March 2018 [cited 2021 May 18]. https://www.nationalgeographic.com/science/article/cape-town-running-out-of-water-drought-taps-shutoff-other-cities        [ Links ]

40.Cumming TL, Shackleton RT, Förster J, Dini J, Khan A, Gumula M, et al Achieving the national development agenda and the Sustainable Development Goals (SDGs) through investment in ecological infrastructure: A case study of South Africa. Ecosyst Serv. 2017;27:253-260. http://dx.doi.org/10.1016/j.ecoser.2017.05.005        [ Links ]

41.Convention on Biological Diversity. Aichi biodiversity targets [webpage on the Internet]. c2011 [cited 2017 Mar 04]. http://www.cbd.int/sp/targets/        [ Links ]

42.Government of South Africa. National Protected Areas Expansion Strategy for South Africa. Pretoria: Government of South Africa; 2008. Available from: https://www.environment.gov.za/sites/default/files/docs/nationalprotected_areasexpansion_strategy.pdf        [ Links ]

43.South African Department of Environmental Affairs (DEA). National Climate Change Adaptation Strategy. Pretoria: DEA; 2017. Available from: https://www.environment.gov.za/sites/default/files/docs/nationalclimatechange_adaptationstrategy_ue10november2019.pdf        [ Links ]

44.South African National Biodiversity Institute (SANBI). Factsheet on biodiversity stewardship. Pretoria: SANBI; 2014. Available from: https://www.sanbi.org/wp-content/uploads/2018/04/sanbi-biodiversity-stewardship-factsheet-2nd-edition-2015.pdf        [ Links ]

45.Plummer R, Baird J, Armitage D, Bodin Ö, Schultz L. Diagnosing adaptive comanagement across multiple cases. Ecol Soc. 2017;22(3):19. https://doi.org/10.5751/es-09436-220319        [ Links ]

46.Miles M, Huberman M. Qualitative data analysis: An expanded sourcebook. 2nd ed. London: SAGE Publications; 1994.         [ Links ]

47.Angst M, Widmer A, Fischer M, Ingold K. Connectors and coordinators in natural resource governance: Insights from Swiss water supply. Ecol Soc. 2018;23(2), Art. #1. https://doi.org/10.5751/ES-10030-230201        [ Links ]

48.Sayles JS, Baggio JA. Social-ecological network analysis of scale mismatches in estuary watershed restoration. Proc Natl Acad Sci USA. 2017;114(10):e1776-1785. https://doi.org/10.1073/pnas.1604405114        [ Links ]

49.Crona BI, Parker JN. Learning in support of governance: Theories, methods, and a framework to assess how bridging organizations contribute to adaptive resource governance. Ecol Soc. 2012;17(1):32. https://doi.org/10.5751/ES-04534-170132        [ Links ]

50.Tengö M, Hill R, Malmer P, Raymond CM, Spierenburg M, Danielsen F, et al. Weaving knowledge systems in IPBES, CBD and beyond-lessons learned for sustainability. Curr Opin Environ Sustain. 2017;26-27:17-25. https://doi.org/10.1016/j.cosust.2016.12.005        [ Links ]

51.Lubell M. Collaborative partnerships in complex institutional systems. Curr Opin Environ Sustain. 2015;12:41-47. http://dx.doi.org/10.1016/j.cosust.2014.08.011        [ Links ]

52.Sandström A, Carlsson LG. Policy networks: The relation between structure and performance. Dep Bus Adm Soc Sci. 2008;36(4):497-525. https://doi.org/10.1111/j.1541-0072.2008.00281.x        [ Links ]

53.Roux DJ, Nel JL, Cundill G, O'Farrell P, Fabricius C. Transdisciplinary research for systemic change: Who to learn with, what to learn about and how to learn. Sustain Sci. 2017;12:711-726. https://doi.org/10.1007/s11625-017-0446-0        [ Links ]

 

 

Correspondence:
Samantha Mc Culloch-Jones
Email: samantha.mcculloch@mandela.ac.za

Received: 08 July 2021
Revised: 28 Apr. 2022
Accepted: 06 May 2022
Published: 29 Sep. 2022

 

 

Editor: Floretta Boonzaier
Funding: United Nations Development Programme (UNDP PIMS ID:4943), Nelson Mandela University

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