A transition to a low-carbon electricity supply is crucial to limit the impacts of climate change. Reducing carbon emissions could help prevent the world from reaching a tipping point, where runaway emissions are likely. Runaway emissions could lead to extremes in weather conditions around the world -- especially in problematic regions unable to cope with these conditions. However, the movement to a low-carbon energy supply can not happen instantaneously due to the existing fossil-fuel infrastructure and the requirement to maintain a reliable energy supply. Therefore, a low-carbon transition is required, however, the decisions various stakeholders should make over the coming decades to reduce these carbon emissions are not obvious. This is due to many long-term uncertainties, such as electricity, fuel and generation costs, human behaviour and the size of electricity demand. A well choreographed low-carbon transition is, therefore, required between all of the heterogenous actors in the system, as opposed to changing the behaviour of a single, centralised actor. The objective of this thesis is to create a novel, open-source agent-based model to better understand the manner in which the whole electricity market reacts to different factors using state-of-the-art machine learning and artificial intelligence methods. In contrast to other works, this thesis looks at both the long-term and short-term impact that different behaviours have on the electricity market by using these state-of-the-art methods.
翻译:向低碳电力供应的过渡对于限制气候变化的影响至关重要。减少碳排放可以帮助阻止世界达到一个临界点,因为有可能出现离散排放。离散排放可能导致全世界气候条件极端,特别是在问题地区,无法应对这些条件。然而,由于现有的化石燃料基础设施和维持可靠能源供应的要求,向低碳能源供应的过渡不可能瞬间发生。因此,低碳转型需要各利害关系方在未来几十年中做出新的、开放源代码的模型,以更好地理解整个电力市场如何对这些碳排放作出反应。这是因为许多长期的不确定性,如电力、燃料和发电成本、人类行为和电力需求规模等。因此,精心排列的低碳转型需要系统的所有异质行为者之间的过渡,而不是改变单一、集中的行为者的行为。这一理论的目的是创建一种新型的、基于开放源的模型,以便更好地了解整个电力市场对不同因素的反应方式,例如电力、燃料和发电成本、人类行为和电力需求规模的大小。通过采用这种长期的模型,利用这些长期的市场模型研究方法来审视其他方法的模型。