O. Olatunji, N. Madushele, P. Adedeji, S. Akinlabi
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引用次数: 1
摘要
生物质能是清洁能源领域中极具发展前景的可再生能源之一。其应用和来源的多样性使得其勘探的数字化提供了一系列有吸引力的机会,以减缓气候变化,促进经济发展和减少对电力的依赖的方式部署不同类别的生物质。本研究讨论了生物能源勘探数字化的驱动因素,以及生物能源价值链上的相关机遇和挑战。作为概念验证,讨论了基于生物质数字化智能分类视角的案例研究。阐述了两种分类器:基于稀疏随机纠错输出的支持向量机(srecoc - svm)和基于欧几里得距离的k近邻(KNN-EUM),并重点介绍了模型开发的过程。应用相关性能指标对所建立的模型进行评价。最显著的是,在计算时间(CT)为20.41秒时,srecoc - svm的准确率、灵敏度和特异性分别为0.77、0.81、0.97,而在计算时间(CT)为20.40秒时,KNN-EUM的准确率、灵敏度和特异性分别为0.55、0.56、0.96。其他一些综合指标包括G-means、F1-score、Mathews correlation coefficient (MCC)、Discriminant power (DP)。总的来说,数据分析、人工智能和其他区块链技术之间需要一种协同关系,以释放数字化的全部好处。
Digitalisation of Biomass Exploration: A Case Study of Biomass Feedstock Classification
Biomass is one of the renewable energy (RE) sources with high prospects in the clean energy strata. The diversity of its application and sources have made digitalisation of its exploration presents an array of attractive opportunity to deploy different categories of biomass in a manner that mitigates climate change, advances economies and reduces power dependency. This study discusses the drivers of digitalisation in bioenergy exploration with the associated opportunities and challenges along the bioenergy value chain. As proof of concept, a case study based on the intelligent classification perspective of digitalisation of biomass was discussed. Two classifiers: Sparse Random Error-Correcting Output-based Support Vector Machine (SRECO-SVM) and Euclidean distance-based k-Nearest Neighbour (KNN-EUM) were elaborated while the procedures for the model development were highlighted. Relevant performance indices were applied to evaluate the models developed. Most significantly, the Accuracy, Sensitivity, Specificity were 0.77, 0.81, 0.97 respectively for SRECO-SVM at the computational time (CT) of 20.41 secs while 0.55, 0.56, 0.96 respectively were reported for KNN-EUM at the computational time (CT) of 20.40 secs. Some other composite metrics, which include G-means, F1-score, Mathews correlation coefficient (MCC), Discriminant power (DP) were reported. On the overall, a synergistic relationship is needed between the data analytics, artificial intelligence and other blockchain technologies in order to unleash the full benefits of digitalisation.