Mathematical optimization techniques are among the most successful tools for controlling technical systems optimally with feasibility guarantees. Yet, they are often centralized—all data has to be collected in one central and computationally powerful entity. Methods from distributed optimization overcome this limitation. Classical approaches, however, are often not applicable due to non-convexities. This work develops one of the first frameworks for distributed non-convex optimization.
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Engelmann, A. 2022. Distributed Optimization with Application to Power Systems and Control. Karlsruhe: KIT Scientific Publishing. DOI: https://doi.org/10.5445/KSP/1000144792
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Veröffentlicht am 21. November 2022
Englisch
226
Paperback | 978-3-7315-1180-9 |