Evolution Algorithms and Biomass Properties Prediction: A Review

O. Olatunji, S. Akinlabi, N. Madushele, P. Adedeji, S. Fatoba
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引用次数: 3

Abstract

The complexity of real-world applications of biomass energy has increased substantially due to so many competing factors. There is an ongoing discussion on biomass as a renewable energy source and its cumulative impact on the environment vis-a-vis water competition, environmental pollution and so on. This discussion is coming at a time when evolutionary algorithms and its hybrid forms are gaining traction in several applications. In the last decade, evolution algorithms and its hybrid forms have evolved as a significant optimization and prediction technique due to its flexible characteristics and robust behaviour. It is very efficient means of solving complex global optimization problems. This article presents the state-of-the-art review of different types of evolutionary algorithms, which have been applied in the prediction of major properties of biomass such as elemental compositions and heating values. The governing principles, applications, merits, and challenges associated with this technique are elaborated. The future directions of the research on biomass properties prediction are discussed.
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进化算法与生物量预测研究进展
由于许多相互竞争的因素,生物质能的实际应用的复杂性大大增加。关于生物质作为一种可再生能源及其相对于水竞争、环境污染等对环境的累积影响正在进行讨论。这个讨论是在进化算法和它的混合形式在几个应用程序中获得牵引力的时候出现的。在过去的十年中,进化算法及其混合形式由于其灵活的特性和鲁棒性已经发展成为一种重要的优化和预测技术。它是求解复杂全局优化问题的有效手段。本文介绍了不同类型的进化算法的最新进展,这些算法已应用于预测生物质的主要特性,如元素组成和热值。详细阐述了与该技术相关的控制原则、应用、优点和挑战。展望了生物质特性预测的未来研究方向。
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