Extracting governing physics from data is a key challenge in many areas of science and technology. The existing techniques for equations discovery are dependent on both input and state measurements; however, in practice, we only have access to the output measurements only. We here propose a novel framework for learning governing physics of dynamical system from output only measurements; this essentially transfers the physics discovery problem from the deterministic to the stochastic domain. The proposed approach models the input as a stochastic process and blends concepts of stochastic calculus, sparse learning algorithms, and Bayesian statistics. In particular, we combine sparsity promoting spike and slab prior, Bayes law, and Euler Maruyama scheme to identify the governing physics from data. The resulting model is highly efficient and works with sparse, noisy, and incomplete output measurements. The efficacy and robustness of the proposed approach is illustrated on several numerical examples involving both complete and partial state measurements. The results obtained indicate the potential of the proposed approach in identifying governing physics from output only measurement.
翻译:从数据中提取物理数据是许多科学和技术领域的一个关键挑战。现有的方程发现技术取决于投入和状态测量;然而,在实践中,我们只能获得产出测量。我们在此提议一个创新的框架,从仅产出测量中学习动态系统的物理;这基本上将物理发现问题从确定性从确定性转向随机性领域。提议的方法模型将输入作为一种随机化过程,并结合了随机微积分、稀疏学习算法和巴耶斯统计等概念。特别是,我们把促进峰值和平板前的孔径法和Euler Maruyama计划结合起来,从数据中确定物理的原理。所产生的模型效率很高,与稀疏、吵杂和不完整的产出测量方法一起工作。拟议方法的功效和稳健性在几个数字例子中作了说明,其中既包括完整又包括部分国家测量。获得的结果表明,拟议方法有可能从产出中确定物理管理。