Robust Soliton Distribution-Based Zero-Watermarking for Semi-Structured Power Data

Lei Zhao, Yunfeng Zou, Chao Xu, Yulong Ma, Wen Shen, Qiuhong Shan, Shuai Jiang, Yue Yu, Yihan Cai, Yubo Song, Yu Jiang
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Abstract

To ensure the security of online-shared power data, this paper adopts a robust soliton distribution-based zero-watermarking approach for tracing semi-structured power data. The method involves extracting partial key-value pairs to generate a feature sequence, processing the watermark into an equivalent number of blocks. Robust soliton distribution from erasure codes and redundant error correction codes is utilized to generate an intermediate sequence. Subsequently, the error-corrected watermark information is embedded into the feature sequence, creating a zero-watermark for semi-structured power data. In the tracking process, the extraction and analysis of the robust zero-watermark associated with the tracked data facilitate the effective identification and localization of data anomalies. Experimental and simulation validation demonstrates that this method, while ensuring data security, achieves a zero-watermark extraction success rate exceeding 98%. The proposed approach holds significant application value for data monitoring and anomaly tracking in power systems.
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基于稳健孤子分布的半结构化电力数据零水印技术
为确保在线共享电力数据的安全性,本文采用了一种基于孤子分布的鲁棒零水印方法来追踪半结构化电力数据。该方法包括提取部分键值对生成特征序列,将水印处理为等量的块。利用擦除码和冗余纠错码的稳健孤子分布生成中间序列。随后,纠错水印信息被嵌入特征序列,为半结构化电力数据创建零水印。在跟踪过程中,提取和分析与跟踪数据相关的稳健零水印有助于有效识别和定位数据异常。实验和模拟验证表明,该方法在确保数据安全的同时,零水印提取成功率超过 98%。所提出的方法在电力系统的数据监控和异常跟踪方面具有重要的应用价值。
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