Optimal Configuration of Hybrid Energy Storage System Catered for Low-Carbon Smart Industrial Park

Sun Yifan, Wang Lin, Y. Cenyu, Zhu Ye, Jin Yi, Dong Weijie
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引用次数: 1

Abstract

Due to the driven of green development and continuous innovation in information technology, Chinese industrial park is striving to achieve “zero emission” of pollutants through various measures such as waste exchange, recycling, integrated energy utilization, cleaner and smart production, etc. For zero-carbon operation of energy utilization in industrial park, this paper studies the optimal configuration of hybrid energy storage system (ESS) in integrated energy utilization. Firstly, the energy flowing model is analyzed to adapt to the zero-carbon development. Then, considering uncertainties of renewable resources and load, three objectives with various constraints are constructed from investment cost, peak-load shifting and annual carbon emission. Also, the improved non-dominated sorting genetic algorithm (NSGA) is employed to solve it. Simulations on IEEE 33 bus with different green energy demonstrate that the constructed optimization models can achieve the balance of the investment and environmental protection. The proposed improved solving method may raise the convergence of solving nonlinear multiobjective under constrained condition.
面向低碳智慧产业园的混合储能系统优化配置
在绿色发展和信息技术不断创新的推动下,中国工业园区正在通过废弃物交换、循环利用、能源综合利用、清洁智能生产等多种措施,努力实现污染物的“零排放”。针对工业园区能源利用的零碳运行,研究了混合储能系统在综合能源利用中的最优配置。首先,分析了适应零碳发展的能量流动模型。然后,考虑可再生资源和负荷的不确定性,从投资成本、调峰和年碳排放三个方面构建了具有不同约束条件的目标。并采用改进的非支配排序遗传算法(NSGA)进行求解。在不同绿色能源的IEEE 33总线上的仿真结果表明,所构建的优化模型能够实现投资与环境保护的平衡。提出的改进求解方法可以提高约束条件下求解非线性多目标问题的收敛性。
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