An Uncertainty-Aware Combined Multistable Stochastic Resonance Bayesian Neural Network for Gearbox Fault Diagnosis in Noisy Envi 候选 · 未审核

atlas:an-uncertainty-aware-combined-multistable-stochastic-resonance-b

"    In industrial transmission systems, gearboxes often operate under strong noise and complex conditions, where weak fault information is frequently buried in background noise, directly affecting the safe operation and life-cycle management of equipment. Although traditional stochastic resonance methods amplify fault features by exploiting noise gain effects, existing work is often limited to single potential well models or ignores model uncertainty, resulting in narrow applicability and poor robustness. To address the difficulty of identifying weak gearbox faults in noisy environments, this paper proposes an uncertainty-aware combined multistable stochastic resonance\u2013Bayesian neural network (MSSR\u2013BNN) method. First, a stochastic resonance model containing triple-well and multi-well combinations is constructed to amplify weak fault features by adaptively adjusting the noise intensity and well depth. Second, a Bayesian neural network is introduced to quantify uncertainty by approximating the posterior through Monte Carlo dropout, and a gating mechanism is designed to fuse multiple model predictions to enhance generalization performance. Finally, comparative experiments and simulations are conducted on a public gearbox dataset and self-collected industrial data to verify the superior performance of the proposed method under noisy conditions. Experimental results show that the proposed MSSR\u2013BNN improves the average accuracy by $2\\text{--}7\\%$ and reduces the calibration error by $30\\%$ at different noise levels, while providing reliable confidence estimates, demonstrating better advantages than the comparison methods. "

落地页
https://ieee-dataport.org/documents/uncertainty-aware-combined-multistable-stochastic-resonance-bayesian-neural-network
许可证
CC-BY-4.0 (判读置信:未知)
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。
发布年份
2025
发布方
IEEE DataPort
设备类型
gearbox
PHM 任务
fault_diagnosis
溯源(PROV,10 条)
source_citation: curation/dataset-shortlist-v0.yaml(mech_oam_hub#82)retrieved_on: 2026-07-08asserted_by: automated_harvestnote: 由清单条目初始化的最小候选卡
about_field: description,publisher,publication_yearsource_url: https://api.datacite.org/dois/10.21227/gr74-3659retrieved_on: 2026-07-08asserted_by: automated_harvestnote: DataCite REST 元数据回填;仅填空字段,人工值不覆盖
about_field: equipment_typessource_citation: facet-batch-02.yamlretrieved_on: 2026-07-08asserted_by: automated_extractionnote: 代理归纳刻面(依据:描述:工业传动系统齿轮箱强噪声弱故障);候选区,晋升需人工核验
about_field: operating_conditionssource_citation: graphrag 抽取自论文 atlas:an-uncertainty-aware-combined-multistable-stochastic-resonance-b(model=glm-5.2, temperature=0)retrieved_on: 2026-07-09asserted_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 atlas:an-uncertainty-aware-combined-multistable-stochastic-resonance-b(model=glm-5.2, temperature=0)retrieved_on: 2026-07-09asserted_by: automated_extractionconfidence_level: grounded_nativenote: values: fault_diagnosis;候选区,晋升需人工核验(ADR-26)
about_field: operating_conditionssource_citation: 人工核验:zfbin(认可执行建议委托 2026-07-09)retrieved_on: 2026-07-09asserted_by: human_curatorconfidence_level: human_verifiednote: 人工改写。核验剔除 operating_conditions=[environment]:strong noise 系信号噪声非环境工况(06 判读)
about_field: source_citation: 人工核验:zfbin(认可执行建议委托 2026-07-09)retrieved_on: 2026-07-09asserted_by: human_curatorconfidence_level: human_verifiednote: 晋升核心区。晋升批次 03:逐断言对照自述核验(evidence/KLS-016/06),两代自动填充一并核验
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_idsource_citation: 人工核验:zfbin(三问拍板 2026-07-11)retrieved_on: 2026-07-11asserted_by: human_curatorconfidence_level: human_verifiednote: 人工改写。license 记法归一 cc-by-4.0 → CC-BY-4.0(SPDX 规范 id,ADR-25 清账①,2026-07-11 用户拍板;许可语义不变)
about_field: source_citation: 人工核验:zfbin(拍板 2026-07-11)retrieved_on: 2026-07-11asserted_by: human_curatorconfidence_level: human_verifiednote: 降级候选重审:KLS-009 实证:作者对同一 DataPort 记录(DOI 10.21227/gr74-3659)原地同义改写(标题/摘要整体换皮,Last updated 2026-03-01,疑查重规避)——批次 03 晋升所依据的自述文本已不存在,发布方可信度受损;降级待人工重审(现页标题 Probabilistic Fusion Multi-Well Noise-Enhanced Deep Learning Model...)