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Scenario-based prediction of climate change impacts on building cooling energy consumption with explainable artificial intelligence

机译:基于场景的气候变化预测对易于解释的人工智能建设冷却能耗的影响

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In this paper, we present a newly developed eXplainable artificial intelligence (XAI) model to analyze the impacts of climate change on the cooling energy consumption (Ec) in buildings, predict long-term Ec under the new shared socioeconomic pathway (SSP) climate change scenarios, and explain the underlying reasons behind the predictions. Such analyses and future predictions are imperative to allow decision-makers and stakeholders to accomplish climate-resilient and sustainable development goals by leveraging the power of meaningful and trustworthy projections and insights. We demonstrated that the XAI is capable of predicting the Ec under future climate scenarios with high accuracy (R-2 0.9) and reveals the critical inflection points of the daily average outdoor air temperature (T-a) beyond which the E-c increase exponentially. We applied the XAI model for residential and commercial buildings in hot-humid and mixed-humid climate regions to quantify the incremental impacts of climate change on Ec under the different SSPs. The XAI-based analysis concluded positive and persistent incremental changes in the Ec from 2020 to 2100 under all future SSP scenarios, with the maximum incremental impact of 24.5%, 33.3%, 57.8%, and 87.2% in hot-humid and 37.1%, 47.5%, 85.3%, and 121% in mixed-humid climate regions under the sustainable green energy (SSP126), business-as-usual (SSP245), challenges to adaptation (SSP370), and increased reliance on fossil fuels (SSP585) scenarios, respectively. Potential increases in the Ec in future climates could have significant adverse impacts on the local and regional economy if necessary adaptation and mitigation measures are not implemented a priori.
机译:在本文中,我们提出了一种新开发的可解释的人工智能(XAI)模型,分析了气候变化对建筑物中冷却能耗(EC)的影响,预测新的共同社会经济途径(SSP)气候变化下的长期EC场景,并解释预测背后的基本原因。这种分析和未来的预测是允许决策者和利益相关者通过利用有意义和值得信赖的预测和见解来实现气候有可持续的发展目标。我们证明XAI能够在未来的气候情景下预测EC,具有高精度(R-2> 0.9),并揭示了每日平均室外空气温度(T-A)的临界拐点,超出其e-C呈指数增加。我们将XAI模型应用于热潮湿和混合潮湿的气候区的住宅和商业建筑,以量化不同SSPS下欧盟欧盟的增量影响。基于XAI的分析在所有未来的SSP场景下,EC从2020年到2100的阳性和持续的增量变化,最大增量影响为24.5%,33.3%,57.8%,热潮湿和37.1%的87.2%,在可持续的绿色能源(SSP126)下,混合潮湿的气候区的47.5%,85.3%和121%,常规(SSP245),适应挑战(SSP370),并增加对化石燃料的依赖(SSP585)情景, 分别。如果必要的适应和缓解措施,未来欧洲委员会在未来气息中的潜在增加可能会对当地和区域经济产生重大的不利影响。

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