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![]() Title:Adaptive Multi-Scale Attention-Based LSTM Coupling for Early Detection Conference:ECAI-2026 Tags:automotive E/E systems, dual-path architecture and LSTM Abstract: This paper introduces a novel adaptive, attention-coupled Long Short-Term Memory (LSTM) architecture developed specifically for real-time scenario recognition and prediction in complex automotive electrical/electronic (E/E) systems. Modern vehicles generate rapidly growing data streams from signals such as current, voltage, and temperature. We address this by monitoring critical signal patterns via a fused LSTM. The proposed dual-path methodology comprises a trend path for long-term pattern modeling and a motif path for short-term pattern recognition, coupled via a bidirectional, attention-based gating mechanism that enables dynamic information exchange. The outputs provide a reliable basis for initiating high-resolution data capture or adaptive system responses once a scenario is identified with high confidence. Experimental results demonstrate significant reductions in mean squared error compared to the individual values and interpretable attention weights that reveal information-exchange patterns. The proposed approach enables robust, noise-resilient forecasts and allows for efficient, data-driven development for future EE architectures. Adaptive Multi-Scale Attention-Based LSTM Coupling for Early Detection ![]() Adaptive Multi-Scale Attention-Based LSTM Coupling for Early Detection | ||||
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