电子学报
電子學報
전자학보
ACTA ELECTRONICA SINICA
2015年
1期
30-35
,共6页
司小胜%胡昌华%张琪%何华锋%周涛
司小勝%鬍昌華%張琪%何華鋒%週濤
사소성%호창화%장기%하화봉%주도
剩余寿命估计%退化模型%不确定测量%Kalman滤波
剩餘壽命估計%退化模型%不確定測量%Kalman濾波
잉여수명고계%퇴화모형%불학정측량%Kalman려파
remaining useful life estimation%degradation model%uncertain measurements%Kalman filter
剩余寿命估计是工程系统预测与健康管理的关键。目前,基于观测的系统退化数据进行剩余寿命估计得到了很大的关注。由于系统随机退化过程和测量误差的影响,测量数据中不可避免包含退化随机性和测量不确定性。然而,现有基于观测数据的剩余寿命估计研究中,没有将退化随机性和测量不确定性对估计的剩余寿命分布的影响同时考虑。鉴于此,提出了一种基于Wiener过程且同时考虑随机退化和不确定测量的退化建模方法,利用Kalman滤波技术,实现了潜在退化状态的实时估计。在退化状态估计的基础上,得到了同时考虑退化状态不确定性和测量不确定性的解析剩余寿命分布。此外,提出了一种基于极大似然方法的退化模型参数估计方法。最后,通过陀螺仪的退化测量数据验证了本文提出的方法优于不考虑测量不确定性的方法,可以提高剩余寿命估计的准确性。
剩餘壽命估計是工程繫統預測與健康管理的關鍵。目前,基于觀測的繫統退化數據進行剩餘壽命估計得到瞭很大的關註。由于繫統隨機退化過程和測量誤差的影響,測量數據中不可避免包含退化隨機性和測量不確定性。然而,現有基于觀測數據的剩餘壽命估計研究中,沒有將退化隨機性和測量不確定性對估計的剩餘壽命分佈的影響同時攷慮。鑒于此,提齣瞭一種基于Wiener過程且同時攷慮隨機退化和不確定測量的退化建模方法,利用Kalman濾波技術,實現瞭潛在退化狀態的實時估計。在退化狀態估計的基礎上,得到瞭同時攷慮退化狀態不確定性和測量不確定性的解析剩餘壽命分佈。此外,提齣瞭一種基于極大似然方法的退化模型參數估計方法。最後,通過陀螺儀的退化測量數據驗證瞭本文提齣的方法優于不攷慮測量不確定性的方法,可以提高剩餘壽命估計的準確性。
잉여수명고계시공정계통예측여건강관리적관건。목전,기우관측적계통퇴화수거진행잉여수명고계득도료흔대적관주。유우계통수궤퇴화과정화측량오차적영향,측량수거중불가피면포함퇴화수궤성화측량불학정성。연이,현유기우관측수거적잉여수명고계연구중,몰유장퇴화수궤성화측량불학정성대고계적잉여수명분포적영향동시고필。감우차,제출료일충기우Wiener과정차동시고필수궤퇴화화불학정측량적퇴화건모방법,이용Kalman려파기술,실현료잠재퇴화상태적실시고계。재퇴화상태고계적기출상,득도료동시고필퇴화상태불학정성화측량불학정성적해석잉여수명분포。차외,제출료일충기우겁대사연방법적퇴화모형삼수고계방법。최후,통과타라의적퇴화측량수거험증료본문제출적방법우우불고필측량불학정성적방법,가이제고잉여수명고계적준학성。
Remaining useful lifetime (RUL) estimation is a key issue in prognosis and health management for industrial sys-tems .Currently ,the use of the observed degradation data of a system holds promise to estimate its RUL .Due to the effect of sys-tem’s stochastic deterioration and uncertain measurements ,the measured data are inevitably contaminated by the stochasticity of the degradation and measurement uncertainty .However ,in current studies of the RUL estimation based on the measured data ,there is no report considering the effect of the degradation stochasticity and measurement uncertainty on the estimated RUL distribution .In this paper ,a new degradation modeling approach is proposed based on Wiener process ,which considers system’s stochastic deterioration and uncertain measurements simultaneously ,and the Kalman filtering technique is utilized to estimate the underlying degradation state .On the basis of the estimated degradation state ,the analytical RUL distribution is derived which accounts for the uncertainties in the estimated degradation state and measurements .Additionally ,a parameter estimation method for the developed model is pre-sented based on the maximum likelihood method .Finally ,a case study for gyros verifies the proposed method and the results indicate that the proposed method is superior to the method without considering uncertain measurements and can improve the accuracy of the estimated RUL .