TY - EJOU AU - Pan, Jinyan AU - Zhang, Jianhua AU - Cheng, Pengfei AU - Wang, Xinyu TI - Towards Reliable Detection of False Data Injection Attacks in Energy Storage Systems: A GAT-BiGRU-GAMNE Approach T2 - Energy Engineering PY - VL - IS - SN - 1546-0118 AB - To address the increasing security concerns associated with battery energy storage systems (BESS) in distribution networks, this paper proposes a hybrid detection model based on a Graph Attention Network–Bidirectional Gated Recurrent Unit–Graph Attention Memory Network Enhanced mechanism (GAT-BiGRU-GAMNE) for effectively identifying False Data Injection Attacks (FDIAs). By leveraging the structural dependencies among grid nodes and the temporal evolution of BESS operations, the proposed spatio-temporal feature fusion framework integrates topological spatial feature extraction, bidirectional temporal dependency modeling, and memory-enhanced prototype matching. First, GAT layers are applied to capture dynamic interaction patterns from multi-node BESS operational data; Subsequently, BiGRU model the bidirectional temporal dynamics of the system; And the GAMNE mechanism is incorporated to adaptively retrieve and reinforce critical attack signatures from a learnable memory bank. The fusion of spatio-temporal feature fusion framework can enhance the model’s capability to recognize subtle and evolving attack patterns. Simulation experiments are conducted on the IEEE 14-bus and 57-bus test systems to validate the detection performance. Results indicate that the proposed method can successfully identify the FDIAs by exploiting the inherent topological correlations and temporal dependencies within BESS data streams. In comparison with existing detection techniques, the proposed model demonstrates clear performance improvements: accuracy, precision, recall, and F1-score increase by 1.33%, 0.56%, 0.83%, and 0.76%, respectively. KW - Energy storage systems; attack detection; false data injection attack; spatial-temporal detection model DO - 10.32604/ee.2026.082419