NeuralMOVES: A lightweight and microscopic vehicle emission estimation model based on reverse engineering and surrogate learning
Edgar Ramirez-Sanchez, Catherine Tang, Yaosheng Xu, Nrithya, Renganathan, Vindula Jayawardana, Zhengbing He, Cathy Wu

TL;DR
NeuralMOVES is a lightweight, accurate surrogate model for vehicle CO2 emissions, developed via reverse engineering and neural networks, enabling real-time microscopic transportation emission analysis with minimal computational resources.
Contribution
This work introduces NeuralMOVES, a novel surrogate modeling framework that simplifies and accelerates vehicle emission estimation by reverse engineering MOVES using neural networks.
Findings
Achieves 6.013% MAE compared to MOVES across 2 million scenarios.
Only 2.4 MB in size, condensing MOVES into a lightweight model.
Enables real-time, microscopic emission analysis without complex software.
Abstract
The transportation sector significantly contributes to greenhouse gas emissions, necessitating accurate emission models to guide mitigation strategies. Despite its field validation and certification, the industry-standard Motor Vehicle Emission Simulator (MOVES) faces challenges related to complexity in usage, high computational demands, and its unsuitability for microscopic real-time applications. To address these limitations, we present NeuralMOVES, a comprehensive suite of high-performance, lightweight surrogate models for vehicle CO2 emissions. Developed based on reverse engineering and Neural Networks, NeuralMOVES achieves a remarkable 6.013% Mean Average Percentage Error relative to MOVES across extensive tests spanning over two million scenarios with diverse trajectories and the factors regarding environments and vehicles. NeuralMOVES is only 2.4 MB, largely condensing the…
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Taxonomy
TopicsVehicle emissions and performance · Catalytic Processes in Materials Science · Air Quality Monitoring and Forecasting
