Improved Dujiangyan Irrigation System Optimization (IDISO): A Novel Metaheuristic Algorithm for Hydrochar Characteristics

Author:

Shi Jingyuan1,Zhang Dapeng1ORCID,Sui Zifeng1,Wu Jie2,Zhang Zifeng1,Hu Wenjie1,Huo Zhanpeng1,Wu Yongfu1

Affiliation:

1. School of Energy and Environment, Inner Mongolia University of Science and Technology, Baotou 014010, China

2. School of Automotive Engineering, Jiangxi College of Applied Technology, Ganzhou 341000, China

Abstract

Hyperparameter tuning is crucial in the development of machine learning models. This study introduces the nonlinear shrinking factor and the Cauchy mutation mechanism to improve the Dujiangyan Irrigation System Optimization (DISO), proposing the improved Dujiangyan Irrigation System Optimization algorithm (IDISO) for hyperparameter tuning in machine learning. The optimization capabilities and convergence performance of IDISO were validated on 87 CEC2017 benchmark functions of varying dimensions and nine real-world engineering problems, demonstrating that it significantly outperforms DISO in terms of convergence speed and accuracy, and ranks first in overall performance among the seventeen advanced metaheuristic algorithms being compared. To construct a robust and generalizable prediction model for hydrochar element characteristics, this study utilized IDISO and DISO algorithms to fine-tune the parameters of the XGBoost model. The experimental results show that the IDISO-XGBoost model achieved an average prediction performance of 0.95, which represents a 4% improvement over the DISO-XGBoost model. These results indicate that the IDISO algorithm has significant potential and value in practical applications.

Funder

Inner Mongolia Autonomous Region Science and Technology Plan Project

Fundamental Research Fund for Inner Mongolia University of Science & Technology

Inner Mongolia Natural Science Foundation

Open Research Project of State Key Laboratory of Baiyunobo Rare Earth Resource Researches and Comprehensive Utilization

Publisher

MDPI AG

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