波音游戏-波音娱乐城赌球打不开

Skip to main content

Probabilistic methods for data-driven reduced-order modeling

Dr Mengwu GUO
Date & Time
24 May 2023 (Wed) | 04:00 PM - 05:00 PM
Venue
Online via Zoom
Registration Link:
https://cityu.zoom.us/meeting/register/tJAtce6hqD8sE9WubgSGU-rQwOKKLJN5OeFe#/registration

ABSTRACT

Efficient and credible multi-query, real-time simulations constitute a critical enabling factor for digital twinning, and data-driven reduced-order modeling is a natural choice for achieving this goal. This talk will discuss two probabilistic methods for the learning of reduced-order dynamics, in which a significantly reduced dimensionality of dynamical systems guarantees improved efficiency, and the endowed uncertainty quantification certifies computational credibility. The first method is the Bayesian reduced-order operator inference, a non-intrusive approach that inherits the formulation structure of projection-based reduced-state governing equations yet without requiring access to the full-order solvers. The reduced-order operators are estimated using Bayesian inference with Gaussian priors, and two fundamentally different strategies of likelihood definition will be discussed. Recovered as posterior Gaussian distributions conditioning on projected state data, the reduced-order operators probabilistically describe a low-dimensional dynamical system for the predominant latent states, and provide a naturally embedded Tikhonov regularization together with a quantification of modeling uncertainties. The second method employs deep kernel learning — a probabilistic deep learning tool that integrates neural networks into manifold Gaussian processes — for the data-driven discovery of low-dimensional latent dynamics from high-dimensional measurements given by noise-corrupted images. This tool is utilized for both the nonlinear dimensionality reduction and the representation of reduced-order dynamics. Numerical results have shown the effectiveness of deep kernel learning in the denoising and uncertainty quantification throughout model reduction.

7位百家乐官网扑克桌| 将军百家乐官网的玩法技巧和规则| 娱乐城新用户送彩金| 百家乐官网空调维修| 大发888提款| 赌神网百家乐官网的玩法技巧和规则 | 在线百家乐策略| 什么是百家乐官网的大路| 大发888官方网站| 百家乐电子作弊器| 来安县| 澳门百家乐赌场娱乐网规则| 百家乐官网的薇笑打法| 百家乐平注法到6568| 真人百家乐官网赌场娱乐网规则| 现金百家乐| 骰子百家乐的玩法技巧和规则| 百家乐官网游戏唯一官网站| 棋牌新闻| 百家乐筹码免运费| 百家乐官网赌博破解| 大发888优惠代码| 扑克百家乐赌器| 新东方百家乐官网的玩法技巧和规则 | 百家乐官网折叠桌| 九乐棋牌下载| 百家乐澳门赌| 网页百家乐| 游戏百家乐官网押金| 百家乐官网什么牌最大| 皇冠官方网址| 免邮百家乐布桌| 天地人百家乐现金网| 百家乐官网评测| 网上百家乐官网骗人不| 天空娱乐城| 大发888注册送50| 百家乐庄牌| 百家乐博娱乐网提款速度快不| 2024属虎人全年运势| 永利高百家乐官网会员|