Remote in-use emissions monitoring of heavy-duty diesel vehicles (HDDVs) is increasingly adopted to strengthen air-quality governance and ensure real-world compliance with nitrogen oxides (NOx) limits. A persistent challenge is the severe cross-sensitivity of electrochemical NOx sensors to ammonia (NH3) slip from aftertreatment systems. This interference inflates apparent NOx emissions, triggers false exceedances, and undermines the credibility of fleet-scale monitoring data. Here, a telematics-integrated dual-algorithm framework is proposed to detect NH3 slip events and correct the NOx measurement bias resulting from NH3-induced cross-sensitivity using only on-board signals, enabling scalable deployment without hardware modification. NH3 slip is first identified using a moving-window NH3 excess index (EINH3) combined with SCR efficiency thresholds to ensure robust event discrimination under transient driving. Cross-sensitivity artifacts are then corrected by constraining the effective selective catalytic reduction conversion to 99% during slip conditions and applying state compensation derived from Arrhenius-type NH3 storage kinetics. The framework is validated on multiple HDDVs over real-driving emission (RDE) cycles using portable emissions measurement systems (PEMS) and a laser spectroscopic NH3 analyzer as independent references. Results show that motorway high-speed operation exacerbates NH3 slip under elevated space velocity and exhaust temperature. Across RDE tests, the identification module achieves 77-97% slip event recall and >93% classification accuracy, while the correction reduces the mean error of the 90th-percentile specific NOx emission (SENOxP90) by 94% (0. 50 to 0. 03 g/kWh), effectively eliminating false exceedances attributable to NH3 interference. In multi-vehicle compliance screening, several vehicles that would have been falsely flagged as non-compliant based on raw remote NOx data were reclassified as compliant after correction, with their estimated emissions falling below the 0. 69 g/kWh regulatory limit, reducing false non-compliance determinations and improving the precision of high-emitter targeting. By enabling scalable and trustworthy NOx quantification, the proposed framework enhances the credibility and cost-effectiveness of telematics-based oversight. It supports cleaner freight operations through more reliable, data-driven emissions governance under real-world driving conditions.
Building similarity graph...
Analyzing shared references across papers
Loading...
Chuntao Liu
Chenxi Wang
Zhiqiang Li
Journal of Environmental Management
University of Leeds
Tianjin University
China Automotive Technology and Research Center
Building similarity graph...
Analyzing shared references across papers
Loading...
Liu et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69d8930e6c1944d70ce041ba — DOI: https://doi.org/10.1016/j.jenvman.2026.129576