Combined economic and emission dispatch by ANN with backprop algorithm using variant learning rate & momentum coefficient

B. Kar, K. Mandal, D. Pal, N. Chakraborty
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引用次数: 9

Abstract

Multi-layered feed-forward artificial neural network (ANN) trained by back-propagation algorithm is used to solve the problem of combined economic and emission dispatch in this paper. The system of generation associates thermal generators and emission involves oxides of nitrogen only. Equality constraints on power balance as well as inequality constraints on generation capacity limits of the generators and transmission loss are also considered. The idea is to minimize total fuel cost of the system and control emission. The problem is first optimized by Lagrange multiplier technique and the result is used to train the ANN wherein tuning parameters eta & alpha are altered to check their effect on convergence rate. The trained ANN is then used to generate test data. It is found that the convergence characteristic of the algorithm is excellent and the results achieved by the proposed method are quite accurate and faster in comparison to the conventional method
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采用变学习率和动量系数的反prop算法的人工神经网络经济与排放联合调度
本文采用反向传播算法训练的多层前馈人工神经网络(ANN)来解决经济与排放的联合调度问题。发电系统与热力发电机联系在一起,排放物只涉及氮氧化物。同时考虑了功率平衡的不等式约束以及发电机发电容量限制和输电损耗的不等式约束。其理念是最小化系统的总燃料成本并控制排放。首先通过拉格朗日乘子技术对问题进行优化,并将结果用于训练人工神经网络,其中调整参数eta和alpha以检查其对收敛速度的影响。然后使用训练好的人工神经网络生成测试数据。结果表明,该算法具有良好的收敛特性,与传统方法相比,该方法的计算精度更高,速度更快
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