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Robust capacity optimization methods for integrated energy systems considering demand response and thermal comfort

机译:考虑需求响应和热舒适的集成能源系统鲁棒容量优化方法

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Integrated Energy System can realize the cascade utilization of energy, which improves the utilization of energy efficiently and reduce the carbon emission. Taking into account the uncertainty of multi-energy load and renewable energy forecasting, this paper presents a bi-level robust optimization model with demand response and thermal comfort, for the capacity planning and operation problem of Integrated Energy System. The outer level optimization is planning to find the optimal integrated energy system configuration to minimize economic investment, while the inner level is to robustly optimize the system scheduling to simultaneously reduce carbon emissions and dissatisfaction of residents & rsquo; participation in demand response. In the simulation, the Pareto front of the multi-objective problem is obtained via NSGA-II algorithm and Gurobi solver, and the best design plans on the Pareto front selected by Topsis method are analyzed and discussed. The results from three modes are compared in simulation, which illustrates the economic and environmental benefits from demand response and thermal comfort. In addition, the impact of different thermal time scales and forecast uncertainties on integrated energy system planning are also discussed. Finally the sensitivity of the influence of the low carbon grid constrains on the optimization is analyzed.(c) 2020 Elsevier Ltd. All rights reserved.
机译:集成能量系统可以实现能量的级联利用,从而有效地提高了能量的利用率,降低了碳排放。考虑到多能量负荷和可再生能源预测的不确定性,本文提出了一种具有需求响应和热舒适性的双级鲁棒优化模型,用于集成能源系统的容量规划和运行问题。外层优化正计划找到最佳的综合能源系统配置,以尽量减少经济投资,而内部层面则是强化优化系统调度,同时减少碳排放和居民的不满碳排放和不满居民’参与需求响应。在模拟中,通过NSGA-II算法和Gurobi求解器获得多目标问题的Pareto前面,分析并讨论了由TopSIS方法选择的Pareto前面的最佳设计计划。三种模式的结果在仿真中进行了比较,从而说明了需求响应和热舒适性的经济和环境效益。此外,还讨论了不同热时间尺度和预测不确定性对集成能源系统规划的影响。最后分析了低碳电网影响对优化影响的敏感性。(c)2020 Elsevier Ltd.保留所有权利。

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