Electricity terminal multi-label recognition with a “one-versus-all” rejection recognition algorithm based on adaptive distillation increment learning and attention MobileNetV2 network for non-invasive load monitoring
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DOI: 10.1016/j.apenergy.2025.125307
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Keywords
Multi-label recognition with “one-versus-all” rejection recognition; Adaptive distillation incremental learning; Non-invasive load monitoring; Attention mechanism; MobileNetV2;All these keywords.
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