4. Methods
This paper took an action research approach to understand how user behaviour and practices could be integrated into an urban renewal project. The study area is a university precinct, which has been identified for urban renewal. The research used information on community behaviour of individuals who will be using the precinct and business practices of firms located within and abutting the precinct from two questionnaire surveys distributed previously (Gajanayake et al., 2024). The major insight from the survey responses was that individuals were lacking the supporting infrastructure to act in a more sustainable manner. The four key areas where infrastructure could aid circularity were identified as public transport, waste management, repair and reuse solutions and more sustainable dining options. The responses received through these surveys were analysed and translated to potential actions that could be implemented in an urban planning setting.
The different strategies were presented to the university community through a temporary exhibition and a focus group session, which included researchers and staff members from across the university and broader industry partners including community development organisations. This presented an opportunity to validate the potential solutions and identify areas for improvement. The feedback received highlighted the lack of focus on the social benefit aspect, especially for the broader community who would frequent this area. Possible interventions proposed in the focus group session, were setting up of community gardens for food waste recycling and refund collection points for used containers.
Further engagement with students through a micro-internship program revealed that student participation will be higher if strategies can be visually experienced, increased social media engagement and incentivised to take sustainability related actions. Based on feedback received through the focus group sessions and the student programs, place-based strategies for specific areas within the precinct were developed.
Areas with high foot traffic within the precinct were identified to design optimal solutions based on the initial data collected. These areas were photographed and the most relevant CE strategies that could be adopted were identified based on accepted CE techniques and the behavioural surveys conducted. Each proposed element was selected for its potential to enhance sustainability, community engagement, and alignment with circular economy principles, ensuring a comprehensive approach to urban development.
Different intervention options were selected for elements within the precinct. These interventions are designed to address key areas such as waste management, energy efficiency, stormwater management, and public health, while also fostering community participation and social benefits. The selection of intervention strategies for urban renewal follows scientifically validated sustainability principles, focusing on environmental, economic, and social impact. Multi-criteria decision analysis (MCDA) was employed to integrate both quantitative and qualitative assessments from peer-reviewed studies. Cost-effectiveness was evaluated through life-cycle cost analysis (LCCA), ensuring long-term material value (Fuller & Petersen, 1996), while balancing initial installation costs against maintenance and operational savings (Kibert, 2016).
Environmental impacts of strategies were evaluated based on various environmental factors such as water management, urban heat island effect and incorporation of recycled content. For example, options for road pavement included permeable materials that mitigate urban flooding through increased infiltration (Fletcher et al., 2015), lighter, porous materials that lower surface temperatures and decrease cooling demand (Santamouris, 2013), incorporating recycled materials align with circular economy (CE) principles (Geissdoerfer et al., 2017).
Social impact considerations include public health benefits, such as reduced waterborne disease risks due to improved flood management (WHO, 2018), and enhanced walkability and safety through smooth, permeable surfaces (Litman, 2013). These criteria ensured that interventions were selected based on robust scientific evidence, optimizing sustainability outcomes.
For instance, porous asphalt and pervious concrete are proposed for road pavement due to their ability to manage stormwater runoff, reduce urban heat island effects, and lower energy consumption for cooling nearby buildings. These materials align with the precinct’s goal of enhancing environmental sustainability and resilience to climate change (EPA, 2021; MIT News, 2021). Similarly, green façades and photovoltaic (PV) façades are recommended for building exteriors to improve air quality, reduce energy demand, and support biodiversity, which are critical in a dense urban environment like Melbourne’s CBD North (Green Roofs Australasia, 2024; MDPI, 2024).
Community-focused interventions such as tool libraries, swap shops, and community fix-it stations are particularly relevant as they promote circular economy practices by reducing waste, encouraging reuse, and fostering community engagement. These initiatives address the lack of supporting infrastructure identified in the surveys and align with the precinct’s goal of creating a more sustainable and inclusive urban environment (Gajanayake et al., 2024). Overall, the proposed interventions are scientifically justified and relevant to the precinct’s context, as they address both environmental and social sustainability goals while aligning with the circular economy principles emphasized in the paper.
To prioritize interventions, a weighted composite index approach is applied, ensuring an evidence-based selection of strategies. The evaluation process involves defining criteria, assigning weights, normalizing values, and computing a final score for ranking interventions.
4.1. Scoring Formula
The composite score for each intervention is calculated as:
where:
C (Cost-effectiveness) = Negative weighting applied to penalize higher costs
Q (Quantified Benefits) = Includes carbon sequestration, energy savings, stormwater management, urban heat reduction, biodiversity, and social/health impact
4.2. Weight Assignments
Weights for each criterion were selected based on sustainability principles and findings from previous research (Anumol et al., 2015, van Loon-Steensma and Vellinga, 2013, Lange et al., 2013, Neufeldt et al., 2015) and is presented in
Table 1.
4.3. Normalization & Ranking
All values were normalized to a [0,1] scale to ensure comparability across different measurement units. The final weighted composite score determines the ranking, with higher scores indicating superior overall performance. This approach ensured flexibility, quantitative objectivity, and a balanced evaluation incorporating economic, environmental, and social factors, allowing for informed decision-making in urban renewal planning. Five interventions for each element within the precinct were chosen based on the sustainability ranking and the community feedback obtained through the surveys and focus groups sessions.
An Agent Based Simulation Model was developed, where users could interact with their environment. And agent-based model allows to model complex systems, adopting a bottom-up approach, starting from induvial agents. An Agent-Based Simulation Model was used to capture the complexity of human–environment interactions in the precinct. This method was chosen for its ability to model individual decision-making and simulate emergent collective behaviours based on diverse user preferences, knowledge, and values. By allowing users to explore various intervention options and observe outcomes, the model supports the identification of strategies with broad user acceptance and systemic impact, aligning with bottom-up, participatory planning approaches.
The model provides users with the ability to select different intervention options for different elements within the precinct. It is assumed that that each user (agent) is an individual entity possessing its own intelligence, values and beliefs and that they make decisions based on what they perceive from their inherent knowledge and assumptions and any additional information provided through the model. The additional information provided for the model included the financial cost and environmental impacts of each intervention. As the number of users of the model increase, emerging behaviours, patterns and structures could be understood. These patterns and structures could then be used to identify optimal interventions that will have broad scale buy-in from users of the actual precinct.