2020
DOI: 10.4271/02-14-01-0006
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Route-Sensitive Fuel Consumption Models for Heavy-Duty Vehicles

Abstract: This article investigates the ability of data-driven models to estimate instantaneous fuel consumption over 1 km road segments from different routes for different heavy-duty vehicles from the same fleet. Models are created using three different techniques: parametric, linear regression, and artificial neural networks. The proposed models use features derived from vehicle speed, mass, and road grade, which can be easily obtained from telematics devices, in addition to power take-off (PTO) active time, which is … Show more

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“…Zhu et al [36] proposed a prediction model based on the improved C4.5 decision tree and verified the effectiveness of the model by relying on a set of test data under the expressway scenario. In addition, the application of gradient boosting algorithms [37,38], LightGBM [39], and linear regression (LR) [40] in fuel consumption prediction models has also achieved good results. In order to give full play to the advantages of traditional machine learning methods, Li [28] and Mahzad [41] et al developed multiple hybrid models, including the Aquila optimizer and extreme gradient boosting (AO-XGB), black widow optimization algorithm and extreme gradient boosting (BWOA-XGB), AO-SVM, AO-RF, etc.…”
Section: Introductionmentioning
confidence: 99%
“…Zhu et al [36] proposed a prediction model based on the improved C4.5 decision tree and verified the effectiveness of the model by relying on a set of test data under the expressway scenario. In addition, the application of gradient boosting algorithms [37,38], LightGBM [39], and linear regression (LR) [40] in fuel consumption prediction models has also achieved good results. In order to give full play to the advantages of traditional machine learning methods, Li [28] and Mahzad [41] et al developed multiple hybrid models, including the Aquila optimizer and extreme gradient boosting (AO-XGB), black widow optimization algorithm and extreme gradient boosting (BWOA-XGB), AO-SVM, AO-RF, etc.…”
Section: Introductionmentioning
confidence: 99%