Large-Scale Modeling and Optimization Strategy for Multi-Energy Management Systems

Leonardy Setyawan, James Tan, Shuya Ding, Eric Raynaud, H. Jing
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引用次数: 3

Abstract

A multi-energy system that controls the generation and storage of different types of energy offers great potential for improving the overall system efficiency and operating cost. The economic dispatch problem for multi-energy systems is to find the optimal system configuration that satisfies the demands under a host of constraints. The problem is often formulated as a mixed integer programming problem, which is very hard to solve since the number of variables involved could be in the order of hundreds. The difficulty of the problem is further compounded when model predictive control is implemented because the set points for controlling the multi-energy system at each time step have to be modeled, drastically increasing the number of variables in the optimization problem. In this paper, a large-scale hybrid optimization strategy is proposed to solve the economic dispatch in a multi-energy management system. Mixed-integer linear programming is used to solve a linearly approximated problem to determine the discrete set points followed by nonlinear programming for the continuous variables. We compare different optimization methods for the nonlinear programming problem with respect to the computational time and cost savings. The cost savings is also compared to a rule-based economic dispatch as the baseline. The simulation is performed using the data obtained from an office building in an R modeling and data management environment. We show that the proposed optimization strategy is able to solve the economic dispatch problem of a multi-energy management system with 720 mixed-integer variables within a short timeframe while still accounting for the nonlinearity of the optimization problem.
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多能源管理系统的大规模建模与优化策略
控制不同类型能源的产生和储存的多能源系统为提高整个系统的效率和运行成本提供了巨大的潜力。多能系统的经济调度问题是在一系列约束条件下找到满足需求的最优系统配置。这个问题通常被表述为一个混合整数规划问题,这很难解决,因为涉及的变量数量可能在数百个数量级。当实现模型预测控制时,问题的难度进一步增加,因为控制多能系统在每个时间步长的设定点必须建模,这大大增加了优化问题中的变量数量。针对多能源管理系统中的经济调度问题,提出了一种大规模混合优化策略。混合整数线性规划用于求解线性逼近问题,确定离散集点,然后对连续变量进行非线性规划。我们比较了不同的优化方法对非线性规划问题的计算时间和成本节约。还将节省的成本与基于规则的经济调度作为基准进行了比较。在R建模和数据管理环境中,使用从办公楼获得的数据执行仿真。结果表明,该优化策略能够在较短时间内解决720个混合整数变量的多能源管理系统的经济调度问题,同时仍然考虑到优化问题的非线性。
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