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Modeling nodal prices in deregulated electricity markets in the usa: current practices and future needs

机译:模拟美国放松管制的电力市场中的节点价格:当前做法和未来需求

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The purpose of this paper is to model the stochastic behavior of the nodal prices of electricity in deregulated markets in the USA, and in particular, to explain how this behavior has changed over time. These changes require different modeling strategies to capture the salient features of the market. The paper discusses three different models. The first model represents the period immediately after deregulation when price spikes were observed during the summer months using stochastic regime switching. Regulators in the northeastern markets responded to these “uncompetitive” price spikes by implementing various forms of market monitoring to mitigate the speculative behavior of generators. However, in a market like New York State, congestion on the transmission lines transferring power to New York City still led to spatial price differences. A new market for Transmission Congestion Credits (TCC) was established to allow generators to hedge these price differences. The second strategy uses Vector Autoregressive (VAR) Models of temperature, demand and price to estimate the financial riskiness of holding a TCC. Finally, current research on modeling the demand for electricity on networks with high penetrations of renewable sources of generation is discussed. Since these sources of generation are generally intermittent, it is likely that controllable demand, such as charging electric vehicles and thermal storage, will be increasingly important as a way to mitigate the variability of supply. These technologies present new challenges for modeling the demand for electricity. It will be important to capture the ability to shift demand from peak to off-peak periods as well as to mitigate the variability of renewable generation.
机译:本文的目的是对美国放松管制的市场中电力节点价格的随机行为进行建模,尤其是要解释这种行为如何随时间变化。这些变化需要不同的建模策略来捕捉市场的显着特征。本文讨论了三种不同的模型。第一个模型表示放松管制后立即进行的时期,该时期在夏季使用随机体制转换观察到价格飙升。东北市场的监管机构通过实施各种形式的市场监测以减轻发电机的投机行为,对这些“非竞争性”的价格上涨做出了反应。但是,在纽约州这样的市场中,将电力传输到纽约市的输电线路拥堵仍然导致空间价格差异。建立了一个新的输电拥堵额度市场(TCC),以允许发电商对冲这些价格差异。第二种策略使用温度,需求和价格的矢量自回归(VAR)模型来估计持有TCC的财务风险。最后,讨论了当前关于对具有高可再生能源渗透率的网络上的电力需求进行建模的研究。由于这些发电来源通常是间歇性的,因此可控需求(例如为电动汽车充电和蓄热)可能会越来越重要,作为减轻供应波动的一种方式。这些技术为模拟电力需求提出了新的挑战。掌握将需求从高峰时段转移到非高峰时段以及减轻可再生能源发电的可变性的能力将非常重要。

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