使用DP的单位承诺-经典和随机方法的详尽工作

B. Saravanan, S. Sikri, K. Swarup, D. Kothari
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引用次数: 5

摘要

在当前的电力市场中,可再生能源发电厂已被纳入电力系统,在需求和发电方面存在很多不可预测性。有许多传统的和进化的规划技术用于解决机组承诺问题。1994年提出了基于收敛分解的增广拉格朗日技术,2007年采用机会约束优化方法求解随机单元承诺问题。动态规划是求解确定性问题的一种传统算法。本文采用差分法求解随机模型。采用近似状态决策方法建立了发电侧的随机模型。程序在MATLAB环境下开发,并在4台8小时系统中进行了广泛的测试。这些方法得到的结果与现有文献一致,结果令人满意。承诺是这样的,总成本是最小的。
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Unit commitment using DP — An exhaustive working of both classical and stochastic approach
In the present electricity market, where renewable energy power plants have been included in the power systems there is a lot of unpredictability in the demand and generation. There are many conventional and evolutionary programming techniques used for solving unit commitment problem. The use of augmented Lagrangian technique by convergence of decomposition method was proposed in 1994, and in 2007 chance constrained optimization was used for providing a solution to the stochastic unit commitment problem. Dynamic Programming is a conventional algorithm used to solve deterministic problem. In this paper DP is used to solve the stochastic model. The stochastic modeling for generation side has been formulated using an approximate state decision approach. The programs were developed in MATLAB environment and were extensively tested for 4 unit 8 hour system. The results obtained from these techniques were validated with the available literature and outcome was satisfactory. The commitment is in such a way that the total cost is minimal.
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