Drawing on the national energy statistics reporting system, this article examines the critical stages of energy consumption statistics and systematically identifies the key challenges in ensuring data quality. Integrating recent practical experiences from a provincial-level energy statistics data quality inspection program, it proposes a “2+1” full-coverage inspection method designed to enhance the accuracy and reliability of enterprise energy consumption data. The findings offer a practical reference for improving data quality assurance mechanisms within energy consumption statistical work.
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