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What is the best practice for benchmark regulation of electricity distribution? Comparison of DEA, SFA and StoNED methods

机译:基准配电的最佳实践是什么? DEA,SFA和StoNED方法的比较

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Electricity distribution is a natural local monopoly. In many countries, the regulators of this sector apply frontier methods such as data envelopment analysis (DEA) or stochastic frontier analysis (SFA) to estimate the efficient cost of operation. In Finland, a new StoNED method was adopted in 2012. This paper compares DEA, SFA and StoNED in the context of regulating electricity distribution. Using data from Finland, we compare the impacts of methodological choices on cost efficiency estimates and acceptable cost. While the efficiency estimates are highly correlated, the cost targets reveal major differences. In addition, we examine performance of the methods by Monte Carlo simulations. We calibrate the data generation process (DCP) to closely match the empirical data and the model specification of the regulator. We find that the StoNED estimator yields a root mean squared error (RMSE) of 4% with the sample size 100. Precision improves as the sample size increases. The DEA estimator yields an RMSE of approximately 10%, but performance deteriorates as the sample size increases. The SFA estimator has an RMSE of 144%. The poor performance of SFA is due to the wrong functional form and multicollinearity.
机译:配电是当地自然的垄断。在许多国家,该行业的监管机构采用前沿方法,例如数据包络分析(DEA)或随机前沿分析(SFA)来估算有效的运营成本。在芬兰,2012年采用了一种新的StoNED方法。本文在调节配电的情况下比较了DEA,SFA和StoNED。使用来自芬兰的数据,我们比较了方法选择对成本效益估算和可接受成本的影响。尽管效率估算值高度相关,但成本目标显示出主要差异。另外,我们通过蒙特卡洛模拟检验了这些方法的性能。我们校准数据生成过程(DCP),以使其与经验数据和调节器的模型规格紧密匹配。我们发现,当样本量为100时,StoNED估计器产生的均方根误差(RMSE)为4%。随着样本量的增加,精度也会提高。 DEA估计器的RMSE约为10%,但是随着样本数量的增加,性能会下降。 SFA估算器的RMSE为144%。 SFA性能不佳是由于错误的功能形式和多重共线性。

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