Maximizing financial benefits of investment tax allowances in renewable energy portfolios

IF 3.1 4区 工程技术 Q3 ENERGY & FUELS Energy Sources Part B-Economics Planning and Policy Pub Date : 2022-09-11 DOI:10.1080/15567249.2022.2118899
Alejandro Castillo-Ramírez, D. Mejía-Giraldo
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Abstract

ABSTRACT Policy makers offer fiscal incentives to encourage companies to invest in renewable technologies. This work considers generation companies that take advantage of fiscal incentives to minimize income tax. Thus, a novel mixed-integer linear optimization model that minimizes total tax payments of a company owning a portfolio of energy projects is designed. The model strategically manages depreciation, tax loss carryforward, and tax incentive use for minimizing discounted income tax. A set of revenue scenarios was employed to analyze model results. The proposed model yields tax savings between 8.2% and 19.2% of the company’s taxes. Tax savings are significantly larger for companies with a large generation portfolio; which represents a clear advantage over small generation companies. The proposed model can also be employed by policy makers to adjust future ITA policies by taking advantage of the anticipative knowledge of the optimal tax strategies implemented by generation companies.
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最大限度地提高可再生能源投资组合的投资税收优惠的财务效益
政策制定者提供财政激励,鼓励企业投资可再生能源技术。这项工作考虑了利用财政激励最小化所得税的发电公司。因此,设计了一个新的混合整数线性优化模型,该模型使拥有能源项目投资组合的公司的总纳税额最小。该模型战略性地管理折旧、税收损失结转和税收激励的使用,以最大限度地减少所得税的贴现。采用一组收益情景对模型结果进行分析。该模型可为公司节省8.2%至19.2%的税收。对于拥有大量发电组合的公司来说,节省的税收要大得多;这与小型发电公司相比具有明显的优势。所提出的模型也可以被政策制定者利用发电公司实施的最优税收策略的预期知识来调整未来的ITA政策。
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来源期刊
CiteScore
6.80
自引率
12.80%
发文量
42
审稿时长
6-12 weeks
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