Browsing by Author "Alderete Peralta, Ali"
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Item Open Access Spatio-temporal modelling of diffusion of electric vehicles and solar photovoltaic panels: an integrated agent-based and artificial neural networks model.(Cranfield University, 2020-07) Alderete Peralta, Ali; Balta-Ozkan, Nazmiye; Kolios, Athanasios; Longhurst, PhilipThis work investigates the spatio-temporal patterns of EV and PV adoption, attending to the need of informing the management of the distribution network with spatially explicit estimations of the EV and PV adoption rates. The research assesses the strengths and weaknesses of current modelling approaches and finds three recurrent techniques: agent-based model (ABM), the spatial regression (SR) and the Poisson model. The research addresses the limitations of the current modelling approaches to characterise the different factors that drive the decision-making for the adoption of these technologies: spatial and temporal dependence and social dynamics. The framework addresses some of the limitations of ABMs that use a rule or equation-based decision-making, by adopting an aggregated agents’ definition and using artificial neural networks (ANN) as decision-making criteria. The integrated model provides a more realistic characterisation of the decision-making and its evolution over time, moreover, the results can inform network operators and policymakers explicitly about the location and pace of EV and PV adoption. The research develops a spatio-temporally explicit ABM that accounts for: (i) spatial and (ii) temporal dependence, (iii) peer-effect, (iv) spillover effect and (iv) preferences towards other technologies. The development of the model follows a sequential approach to managing the complexity of constructing this new approach. First, two autoregressive models are developed to analyse the adoption patterns of EV and PV patterns, using the postcode and monthly data resolution. The temporal validation uses the Mean Absolute Percentage Error to measure the model’s capability to replicate the time-series of the adoption rates. The spatial validation compares the actual and estimated spatial pattern of adoption by calculating the Moran’s I index. Besides, the results are benchmarked against the Bass model, a commonly used tool for this purpose by ABM experts. The results show that in most of the cases the ABM and ANN integrated models perform better than the Bass model especially for those months with high fluctuations in the adoption rates. These models can estimate upmost three months with an accuracy higher than 80%, however, the models present a significant accumulation of errors that limits the results for a longer forecast. To reduce the error accumulation and produce a longer forecast, the autoregressive PV model is extended by including socioeconomic variables. The resulting model improves the performance by 5% by the incorporation of variables including income, electricity consumption and average household size. Lastly, the framework combines the EV and PV autoregressive models with a view to characterising the exchange of knowledge between EVs and PVs. This reflects the influences of owning one of those technologies on the preference for the second technology. The exchange of knowledge improves the performance of the model significantly with results above 80% of accuracy for eight months into the future. Given the high spatial resolution of the model, the results may help to design policies that recognise the socioeconomic differences within a geographical area. The research shows how the results can inform the management of the distribution network, by considering the worst-case scenario where the PV generation surplus is injected to the grid, and where the entire fleet of EVs are charged at home during the night. Also, the results of the hot spot analysis can inform the network operators about the emergence of clusters of EVs and PVs in the future. The research finds that a spatio-temporally explicit ABM can characterise the EV and PV adoption process at the aggregated level, which also accounts for social effects. Such a model can also integrate heterogeneity amongst the population, whilst being resilient to changes in the size of the study area. The research also produces data-driven insights into the spatio-temporal patterns of EV and PV adoption, and how the adaptive capabilities of the ANN address some of the limitations of the ruled-based ABM. Lastly, the research finds that knowledge exchange takes place between the EV and PV adoption process. These findings are relevant to other low carbon technologies and for the modelling of other sociotechnical systems.Item Open Access The road not taken yet: a review of cyber security risks in mobility-as-a-service (MaaS) ecosystems and a research agenda(Elsevier, 2024-10-01) Alderete Peralta, Ali; Balta-Ozkan, Nazmiye; Li, ShujunThis paper identifies the state-of-the-art key aspects for the development of mobility-as-a-service (MaaS) ecosystems and provides evidence on the importance of cyber security which has been broadly overlooked in the literature. The analysis is carried out in three stages: (i) a literature review, (ii) a presentation of expert workshop findings, and (iii) a synthesis of both findings to develop a research agenda on cyber security aspects of MaaS ecosystems. The review identifies and bridges the gap between two strands of MaaS literature: the studies that focus on the factors that drive the development of MaaS, and those that create narratives of future MaaS scenarios. The analysis employs the Business Model Canvas to synthesise important factors that underline the development of MaaS in a 7-dimension matrix. This matrix is then used to assess to what extent the available MaaS scenarios cover such dimensions, showing that the literature has overlooked the incentives for users, incentives for MaaS providers, public governance and cyber security elements of the MaaS development. Finally, this paper synthesises the findings from the review of the literature and an expert workshop to develop a research agenda to characterise and analyse the role of incentives to influence the individuals' and organisations' data sharing preferences and emerging cyber security risks in MaaS ecosystems, which will be of interest to both scholars and policymakers. Only through explicit consideration of data-sharing behaviours and risks across individuals and organisations that MaaS ecosystems can support the transition to a net-zero economy.Item Open Access Vehicle-to-vehicle energy trading framework: a systematic literature review(MDPI, 2024-06-12) Xu, Yiming; Alderete Peralta, Ali; Balta-Ozkan, NazmiyeAs transportation evolves with greater adoption of electric vehicles (EVs), vehicle-to-vehicle (V2V) energy trading stands out as an important innovation for managing energy resources more effectively as it reduces dependency on traditional energy infrastructures and, hence, alleviates the pressure on the power grid during peak demand times. Thus, this paper conducts a systematic review of the V2V energy trading frameworks. Through the included article analysis (n = 61), this paper discusses the state-of-the-art energy trading frameworks’ structure, employed methodologies, encountered challenges, and potential directions for future research. To the best of the authors’ knowledge, this is the first review explicitly focused on V2V energy trading. We detail four critical challenges to face while establishing the framework in current research, providing an overview of various methodologies, including auctions, blockchain, game theory, optimisation, and demand forecasting, that are used to address these challenges and explore their integration within the research landscape. Additionally, this paper forecasts the evolution of V2V energy trading, highlighting the potential incorporation of advanced and established technologies like artificial intelligence (AI), digital twins, and smart contracts. This review aims to encapsulate the existing state of V2V energy trading research and stimulate future advancements and technological integration within the field.