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A Scalable Privacy Preserving Distributed Parallel Optimization for a Large-Scale Aggregation of Prosumers With Residential PV-Battery Systems

Mohammad Dolatabadi, Pierluigi Siano

2020IEEE Access27 citationsDOIOpen Access PDF

Abstract

A novel scalable and privacy-preserving distributed parallel optimization that allows the participation of large-scale aggregation of prosumers with residential PV-battery systems in the market for the ancillary service (ASM) is proposed in this paper. To consider both reserve capacity and energy, day-ahead and real-time stages in the ASM are considered. A method based on hybrid Variable Neighborhood Search (VNS) and distributed parallel optimization is designed for the day ahead and real-time optimization. Different distributed optimization methods are compared and designed and a new distributed optimization method based on Linear Programming (LP) is proposed that outperforms previous methods based on integer and Quadratic programming (QP). The proposed LP-based optimization can be easily coded up and implemented on microcontrollers and connected to a designed Internet of Things (IoT) based architecture. As confirmed by simulation results, carried out considering different realistic case studies, both day-ahead and real-time proposed optimization methods, by allocating the computational effort among local resources, are highly scalable and fulfil the privacy of prosumers.

Topics & Concepts

Computer scienceScalabilityOptimization problemDistributed computingLinear programmingBattery (electricity)Integer programmingMathematical optimizationPower (physics)AlgorithmQuantum mechanicsMathematicsDatabasePhysicsSmart Grid Energy ManagementEnergy Harvesting in Wireless NetworksElectric Vehicles and Infrastructure