Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion
Coupling power-transportation systems may enhance the resilience of power grids by engaging energy-carrying mobile entities such as electric vehicles (EVs), truck-mounted energy storage systems, and Data Centers (DCs), which can shift the computing loads among their network. In practice, the co-opti...
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sg-ntu-dr.10356-1810132024-11-11T05:37:45Z Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion Weng, Yu Xie, Jiahang Sampath, L. P. M. I. Macdonald, Ruaridh Vorobev, Petr Nguyen, Hung Dinh School of Electrical and Electronic Engineering Engineering Co-optimization Transportation system Coupling power-transportation systems may enhance the resilience of power grids by engaging energy-carrying mobile entities such as electric vehicles (EVs), truck-mounted energy storage systems, and Data Centers (DCs), which can shift the computing loads among their network. In practice, the co-optimization problem for power-transportation systems can be overly complicated due to a great deal of uncertainty and many decision variables rooted in the EV population and mobile energy storage. Another challenge is the heterogeneity in terms of size and supporting capability due to various types of such mobile entities. This work aims to facilitate power-transportation co-optimization by proposing and formalizing the concept of Circulating Loads (CirLoads) to generalize these spatial-temporal dispatchable entities. With the new concept, the stochastic process of CirLoads' movement is introduced using Brownian particles for the first time. Such novel particle motion-based modeling for EVs can reflect their stochastic behaviors over time without requiring exact data of EVs. The distributions of CirLoads are further aggregated with Gaussian Mixture Models to reduce the dimensions. Based on this aggregated model, a co-optimization framework is proposed to coordinate the bulk of EVs while respecting data privacy between transportation and power systems. Simulation results demonstrate the effectiveness of the proposed framework. Agency for Science, Technology and Research (A*STAR) This research is supported by the Agency for Science, Technology and Research (A*STAR) Singapore under the awards M23M6c0114 and Toyota North America. 2024-11-11T05:37:44Z 2024-11-11T05:37:44Z 2024 Journal Article Weng, Y., Xie, J., Sampath, L. P. M. I., Macdonald, R., Vorobev, P. & Nguyen, H. D. (2024). Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion. IEEE Transactions On Smart Grid, 3459653-. https://dx.doi.org/10.1109/TSG.2024.3459653 1949-3053 https://hdl.handle.net/10356/181013 10.1109/TSG.2024.3459653 2-s2.0-85204222346 3459653 en M23M6c0114 IEEE Transactions on Smart Grid © 2024 IEEE. All rights reserved. |
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Engineering Co-optimization Transportation system Weng, Yu Xie, Jiahang Sampath, L. P. M. I. Macdonald, Ruaridh Vorobev, Petr Nguyen, Hung Dinh Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
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Coupling power-transportation systems may enhance the resilience of power grids by engaging energy-carrying mobile entities such as electric vehicles (EVs), truck-mounted energy storage systems, and Data Centers (DCs), which can shift the computing loads among their network. In practice, the co-optimization problem for power-transportation systems can be overly complicated due to a great deal of uncertainty and many decision variables rooted in the EV population and mobile energy storage. Another challenge is the heterogeneity in terms of size and supporting capability due to various types of such mobile entities. This work aims to facilitate power-transportation co-optimization by proposing and formalizing the concept of Circulating Loads (CirLoads) to generalize these spatial-temporal dispatchable entities. With the new concept, the stochastic process of CirLoads' movement is introduced using Brownian particles for the first time. Such novel particle motion-based modeling for EVs can reflect their stochastic behaviors over time without requiring exact data of EVs. The distributions of CirLoads are further aggregated with Gaussian Mixture Models to reduce the dimensions. Based on this aggregated model, a co-optimization framework is proposed to coordinate the bulk of EVs while respecting data privacy between transportation and power systems. Simulation results demonstrate the effectiveness of the proposed framework. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Weng, Yu Xie, Jiahang Sampath, L. P. M. I. Macdonald, Ruaridh Vorobev, Petr Nguyen, Hung Dinh |
format |
Article |
author |
Weng, Yu Xie, Jiahang Sampath, L. P. M. I. Macdonald, Ruaridh Vorobev, Petr Nguyen, Hung Dinh |
author_sort |
Weng, Yu |
title |
Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
title_short |
Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
title_full |
Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
title_fullStr |
Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
title_full_unstemmed |
Co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
title_sort |
co-optimizing power-transportation networks with circulating loads and particle-like stochastic motion |
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2024 |
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https://hdl.handle.net/10356/181013 |
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1816859049256288256 |