Application of GPS Monitoring System for Power Emergency Repair Vehicles and Optimization of Operation and Maintenance Costs
DOI:
https://doi.org/10.54097/czt48s10Keywords:
Power emergency repair vehicles, GPS monitoring, Fuel consumption management, Operation and maintenance costsAbstract
Addressing the prominent issues in traditional management modes of power emergency repair vehicles, such as low dispatching efficiency, high fuel consumption, and delayed maintenance warning, this study employs a before-and-after comparative experimental design based on vehicle operation data from a certain company's production and transportation department from 2023 to 2024. It systematically evaluates the application effects of the GPS monitoring system in three core business scenarios: vehicle dispatching optimization, refined fuel consumption control, and maintenance warning. Twenty identical model emergency repair vehicles from a certain fleet were selected as experimental samples, and data on four categories of 12 indicators, including mileage, fuel consumption, maintenance frequency, and violation alarms, were collected for analysis. The results indicate that after the application of the GPS system, the average daily mileage of vehicles increased from 80.2 km to 105.3 km. Fuel consumption per 100 kilometers decreased from 14.2 L to 12.8 L. Average monthly maintenance frequency dropped from 3.2 times to 2.1 times. The number of violations driving alarms decreased from 128 times per month to 48 times per month. This study can provide a replicable and quantifiable operational paradigm for refined vehicle management and control in similar power supply enterprises.
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