Research on Nuclear Power Electronic Sensor Drift Fault Detection and Data Reconstruction Based on the Seq2Seq-PCA Method 核心 · 已核验

doi:10.57760/sciencedb.j00186.00963

As critical sensing components in industrial automation and control systems, electronic sensors are prone to performance degradation and drift faults due to harsh operating environments. Among these, minor drift faults are characterized by slow variation and weak early-stage features, making them difficult to detect promptly using conventional methods. Once accumulated to a detectable level, such faults pose serious threats to system safety and operational stability. To address this issue, this paper proposes a sensor drift fault detection and data reconstruction method based on sequence-to-sequence model and principal component analysis (Seq2Seq-PCA). The method first selects auxiliary variables through Spearman correlation analysis to construct the input feature set. A Seq2Seq model with an attention mechanism is then employed for multi-step rolling prediction to capture the dynamic characteristics of the system. Principal component analysis is applied to the prediction residuals to establish a statistical monitoring model, enabling sensitive detection of minor drift faults. Upon fault detection, the multi-step prediction values of the Seq2Seq model are directly used as the reconstructed output, achieving seamless integration of fault detection and data reconstruction. Experimental results on the nuclear power plant simulator demonstrate that the proposed method achieves accurate detection and reliable reconstruction under various drift rates.

落地页
https://doi.org/10.57760/sciencedb.j00186.00963
许可证
CC-BY-4.0 (判读置信:inferred)
国内可访问性
国内直连:可达 (2026-07-11 检测) 代理通道:可达 (2026-07-11 检测)
检测口径:lychee 双通道单轮探测;「直连超时」表示检测窗口内未完成,系慢或不稳定证据,不构成封锁证据。
设备类型
industrial_process
PHM 任务
fault_detection

故障工况

fault_type: sensor_fault
溯源(PROV,9 条)
source_url: https://doi.org/10.57760/sciencedb.j00186.00963source_citation: quarry_mining_pool sciencedb_oai#10.57760/sciencedb.j00186.00963retrieved_on: 2026-07-09asserted_by: automated_harvestnote: 反向挖掘 v3(KLS-018,词表圈选+全量人工复核):level=L0 score=0.35;候选区,晋升需人工核验
about_field: equipment_typessource_citation: graphrag 抽取自论文 doi:10.57760/sciencedb.j00186.00963(model=glm-5.2, temperature=0)retrieved_on: 2026-07-10asserted_by: automated_extractionconfidence_level: grounded_nativenote: values: industrial_process;候选区,晋升需人工核验(ADR-26)
about_field: fault_conditionssource_citation: graphrag 抽取自论文 doi:10.57760/sciencedb.j00186.00963(model=glm-5.2, temperature=0)retrieved_on: 2026-07-10asserted_by: automated_extractionconfidence_level: grounded_nativenote: values: sensor_fault;候选区,晋升需人工核验(ADR-26)
about_field: operating_conditionssource_citation: graphrag 抽取自论文 doi:10.57760/sciencedb.j00186.00963(model=glm-5.2, temperature=0)retrieved_on: 2026-07-10asserted_by: automated_extractionconfidence_level: grounded_nativenote: values: environment;候选区,晋升需人工核验(ADR-26)
about_field: taskssource_citation: graphrag 抽取自论文 doi:10.57760/sciencedb.j00186.00963(model=glm-5.2, temperature=0)retrieved_on: 2026-07-10asserted_by: automated_extractionconfidence_level: grounded_nativenote: values: fault_detection;候选区,晋升需人工核验(ADR-26)
about_field: operating_conditionssource_citation: 人工核验:zfbin(委托批准 2026-07-10)retrieved_on: 2026-07-10asserted_by: human_curatorconfidence_level: human_verifiednote: 人工改写。核验剔除 operating_conditions=environment('恶劣环境'为动机陈述,数据变化维度是漂移速率)
about_field: source_citation: 人工核验:zfbin(委托批准 2026-07-10)retrieved_on: 2026-07-10asserted_by: human_curatorconfidence_level: human_verifiednote: 晋升核心区。晋升批次 05:KLS-018 挖掘池卡,逐卡逐断言对照自述核验(evidence/KLS-016/08)
about_field: china_accessibilitysource_citation: KLS-009 链接健康扫描(lychee 双通道)retrieved_on: 2026-07-11asserted_by: automated_harvestnote: 定期刷新标注,仅覆盖本字段;历史结果以最新扫描为准
about_field: license_confidence,license_idsource_citation: 人工核验:zfbin(委托批次 KLS-032,2026-07-15)retrieved_on: 2026-07-14asserted_by: human_curatorconfidence_level: human_verifiednote: 人工改写。KLS-032 license 补判:DataCite rightsList(scidb 页面系 SPA 不可核,2026-07-15)