{"title":"Transportation logistics monitoring for transportation systems using the machine learning","authors":"Manmohan Singh Yadav, Rupesh Shukla, C. Parthasarathy, Divya Chikati, Radha Raman Chandan, Kapil Kumar Gupta, Shashi Kant Gupta","doi":"10.32629/jai.v7i4.1321","DOIUrl":null,"url":null,"abstract":"To decrease the number of accidents, Transportation Systems (TS) work to increase traffic efficiency and vehicular flow in urban areas. The production of datasets to carry out an in-depth analysis of the data using machine learning techniques is made possible by the generation of huge volumes of data generated by all the digital devices connected to the transportation network. This paper proposed a machine learning technique called Gradient Descent K-Nearest Neighbors (GD-KNN) for transportation logistics monitoring to improve route optimization, demand forecasting, vehicle maintenance, real-time monitoring, freight optimization, risk assessment, and continuous improvement. By harnessing data from various sources such as GPS devices, sensors, telemetric, and historical transportation data, machine learning algorithms can analyze and process this data to make accurate predictions and recommendations. The collected dataset was pre-processed using z-score normalization, and then Independent Component Analysis (ICA) was applied for the feature extraction process. Real-time monitoring enables the detection of anomalies and delays, providing alerts for timely actions. Freight optimization is achieved by analyzing parameters like weight, size, and delivery locations, resulting in cost reduction and improved load balancing. GD-KNN assesses risks and security threats using data from security systems, ensuring the safety of goods and personnel. Continuous learning allows the system to adapt to changing conditions and improve predictions over time. Overall, GD-KNN empowers transportation logistics monitoring to optimize operations, enhance customer service, and reduce costs in transportation systems.","PeriodicalId":508223,"journal":{"name":"Journal of Autonomous Intelligence","volume":"10 2","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of Autonomous Intelligence","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.32629/jai.v7i4.1321","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
To decrease the number of accidents, Transportation Systems (TS) work to increase traffic efficiency and vehicular flow in urban areas. The production of datasets to carry out an in-depth analysis of the data using machine learning techniques is made possible by the generation of huge volumes of data generated by all the digital devices connected to the transportation network. This paper proposed a machine learning technique called Gradient Descent K-Nearest Neighbors (GD-KNN) for transportation logistics monitoring to improve route optimization, demand forecasting, vehicle maintenance, real-time monitoring, freight optimization, risk assessment, and continuous improvement. By harnessing data from various sources such as GPS devices, sensors, telemetric, and historical transportation data, machine learning algorithms can analyze and process this data to make accurate predictions and recommendations. The collected dataset was pre-processed using z-score normalization, and then Independent Component Analysis (ICA) was applied for the feature extraction process. Real-time monitoring enables the detection of anomalies and delays, providing alerts for timely actions. Freight optimization is achieved by analyzing parameters like weight, size, and delivery locations, resulting in cost reduction and improved load balancing. GD-KNN assesses risks and security threats using data from security systems, ensuring the safety of goods and personnel. Continuous learning allows the system to adapt to changing conditions and improve predictions over time. Overall, GD-KNN empowers transportation logistics monitoring to optimize operations, enhance customer service, and reduce costs in transportation systems.
为了减少交通事故,交通系统(TS)致力于提高城市地区的交通效率和车辆流量。由于连接到交通网络的所有数字设备产生了大量数据,因此可以利用机器学习技术生成数据集,对数据进行深入分析。本文提出了一种名为梯度下降 K 最近邻(GD-KNN)的机器学习技术,用于运输物流监控,以改进路线优化、需求预测、车辆维护、实时监控、货运优化、风险评估和持续改进。通过利用 GPS 设备、传感器、遥测和历史运输数据等各种来源的数据,机器学习算法可以分析和处理这些数据,从而做出准确的预测和建议。收集到的数据集使用 z 值归一化进行预处理,然后在特征提取过程中使用独立成分分析法(ICA)。实时监控可检测异常情况和延误,为及时采取行动提供警报。通过分析重量、尺寸和交货地点等参数,实现了货运优化,从而降低了成本并改善了负载平衡。GD-KNN 利用安全系统的数据评估风险和安全威胁,确保货物和人员的安全。持续学习使系统能够适应不断变化的条件,并随着时间的推移改进预测。总之,GD-KNN 可帮助运输物流监控系统优化运营、提升客户服务并降低运输系统的成本。