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Non-Gaussian Residual Based Short Term Load Forecast Adjustment for Distribution Feeders

机译:基于非高斯剩余的分配馈线的短期负荷预测调整

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摘要

The evolving role for electricity network operators means that load forecasting at the distribution level has become increasingly important, presenting the need for anticipation of the behavior of highly dynamic and diversely distributed loads. The commonly held assumption of Gaussian residuals in forecasting does not always hold for distribution network loads, increasing the uncertainty in balancing a system at this network level. To reduce the operational impact of forecast errors, this paper utilizes different multivariate joint probability distributions to capture the intra-day dependency structure of forecast residuals. Transforming these to the conditional form enables forecast corrections to be made at variable horizons even in the absence of the forecast model. Improvements in accuracy are demonstrated on benchmark load forecast models at distribution level low voltage substations. A practical distribution system application on scheduling embedded energy storage shows substantial reductions in grid imports and hence costs to distribution level customers from utilizing the proposed intraday correction approach.
机译:电力网络运营商的不断发展的作用意味着分配水平的负载预测变得越来越重要,呈现了预期高度动态和多样性载荷的行为的需求。通常持有高斯残差在预测中的假设并不总是持有分销网络负载,从而增加了在该网络级别平衡系统的不确定性。为减少预测误差的操作影响,本文利用不同的多变量联合概率分布来捕获预测残留的日内依赖结构。即使在不存在预测模型的情况下,将这些转换为条件形式使得能够在可变视野中进行预测校正。在分配级别低压变电站的基准负载预测模型上证明了准确性的提高。调度嵌入式能量存储的实用分配系统应用显示电网进口的实质性降低,从而降低了分配级别客户利用所提出的盘整校正方法。

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