基于资本市场的大湖区主要工业用水户水风险评估:投资组合经理的指标

A. Arnold, Celina Jiang, P. Adriaens, S. Sinha, Abigail Teener
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引用次数: 0

摘要

本项目探讨了大湖地区主要工业部门的资本市场用水风险,以该地区最大的一些公司和用水户为代表。大湖地区最大的工业用水户包括(按降序排列):热电、工业、家庭/公共供应和商业部门。重要的是要区分取水和消费用水,前者在商业活动中使用后大部分返回源水库,后者则从现有供应中除去。特定行业的水风险可以从几个角度来看待:流域管理、水作为自然资源约束对企业运营的影响,以及由于运营和增长减少而导致的资本市场上的水风险定价。本文采用的方法建立在投资组合理论的基础上,通过整合股价趋势、公司会计和自愿披露数据,提取股价波动风险指标——水贝塔——反映水和天气风险。该方法利用金融科技公司Equarius Risk Analytics开发的信号处理waterBeta算法,将水/天气风险直接计入股价波动,作为风险溢价。该信号来自风险价值(VaR)模型,该模型捕捉了相对于行业和特定行业基准的股价行为中极端市场波动风险的短期“尾部”。简而言之,较高的waterBeta意味着一家公司更容易受到气候风险导致的资本市场波动的影响。我们的研究结果表明,通过比较四个行业部门的九家公司,公用事业公司的水β信号最低,其次是医疗保健、非必需消费品和工业。水贝塔系数高的公司在短期股价中往往表现出更高程度的尾部风险波动,在水资源紧张地区运营的设施比例高,水强度(WI)低。有趣的是,这些高水贝塔公司也往往有较高的固定资产周转率,这表明高水贝塔公司更依赖固定资产。相反,低水beta公司表现出低VaR,高水强度和高水压力地区设施的百分比。然而,这些公司的固定资产周转率较低,因此从固定资产中产生收入的效率较低。尽管我们的公司子集太小,无法进行全行业的概括,但当一个实体的固定资产周转率较高时,即使是水强度的微小变化或暴露于高水风险区域也会对水beta产生重大影响。ADM (Archer Daniels Midland)就是这种情况。然而,可以观察到相反的趋势,并以热电公司为例,热电公司在从固定资产中产生收入方面效率最低,WI最高,但水β值最低。这在很大程度上是由于热电厂/公司几乎完全依赖地表水,如五大湖,并且由于对水的高度依赖,往往有企业/行业范围的水风险管理战略。值得注意的是,考虑到模型是多参数的,此时的资本市场风险对公司如何解决这种波动提供了有限的反馈。解决用水强度(公司使用多少水来产生收入)只有在其从实物资产中产生收入的效率得到解决时才会产生影响。我们目前正在确定能够采取更有针对性的企业风险管理行动的因素。如前所述,本研究的样本很小,而且集中在区域。在“500”指数中所代表的多个行业的更广泛的公司将有助于开发估算和学习模型,以扩大基于资本市场的水风险观察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Capital Markets-Based Water Risk Assessment of Key Industrial Water Users in the Great Lakes Region: Indicators for Portfolio Managers
This project explores capital markets risk exposure from water use in key industrial sectors in the Great Lakes region, represented by a subset of the region's largest companies and water users. The largest industrial water users in the Great Lakes region include (in decreasing order): thermoelectric, industrial, domestic/public supply, and commercial sectors. It is salient to make the distinction between water withdrawal and consumptive use, whereby the former is largely returned to the source reservoir after use in business operations, and the latter is removed from available supplies. Industry-specific water risks can be viewed through several lenses: watershed stewardship, impact of water as a natural resource constraint on corporate operations, and risk pricing of water in the capital markets as a result of curtailed operations and growth. The approach taken here builds on portfolio theory by integrating share price trends, with corporate accounting and voluntary disclosure data to extract a share price volatility risk metric - waterBeta - reflective of water and weather risk. The approach leverages signal processing waterBeta algorithms developed by Equarius Risk Analytics, a fintech firm, which prices water/weather risk directly into share price volatility, as a risk premium. The signal is derived from value-at-risk (VaR) models, which captures the short term ‘tail’ of extreme market volatility risks in share price behavior relative to industry and sector-specific benchmarks. Simply put, a higher waterBeta means a company is more prone to capital market volatility as a result of climate risks. Our results indicate that, by comparing nine companies across four industry sectors, the waterBeta signal is lowest for utilities, followed by health care, consumer discretionary, and industrials. Companies with high waterBeta tend to exhibit a higher degree of tail risk volatility in their short term share price, have a high percentage of facilities operating in water stressed regions, and exhibit low water intensities (WI). Interestingly, these same high waterBeta companies also tend to have high fixed asset turnover ratios, indicating high waterBeta companies are more dependent on fixed assets. Conversely, low waterBeta companies exhibit low VaR, high water intensities and a high percent of facilities in water stressed locations. However, these companies have low fixed asset turnover ratios, and are thus inefficient at generating revenue from fixed assets. Even though our subset of companies was too small for sector-wide generalizations, it appears that when an entity has higher fixed asset turnover ratios, even small changes in water intensity or exposure to high water risk areas can have a significant impact on waterBeta. This is the case with Archer Daniels Midland (ADM). However, the opposite trend can be observed, and is exemplified by the thermoelectric companies, which are the most inefficient at generating revenue from fixed assets and have the highest WI but exhibit the lowest waterBeta values. This is largely due to the fact that thermoelectric plants/companies rely almost exclusively on surface water sources, such as the Great Lakes, and tend to have corporate/industry wide water risk management strategies in place, given their high dependency on water. It should be noted that this capital markets risk at this time provides limited feedback to the companies on how to address this volatility, given that the model is multiparametric. Addressing water intensity (how much water a company uses to generate revenue) only has impact if its efficiency to generate revenue from its physical assets can be addressed. We are currently identifying factors that enable more targeted corporate risk management actions. As noted, the sample in this study was small and regionally focused. Broader universes of companies across multiple sectors such as represented in the ‘500’ index will serve to develop imputation and learning models to scale capital markets-based water risk observations.
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