We develop a versatile optimization method, which finds the design parameters that minimize time-averaged acoustic cost functionals. The method is gradient-free, model-informed, and data-driven with reservoir computing based on echo state networks. First, we analyse the predictive capabilities of echo state networks both in the short- and long-time prediction of the dynamics. We find that both fully data-driven and model-informed architectures learn the chaotic acoustic dynamics, both time-accurately and statistically. Informing the training with a physical reduced-order model with one acoustic mode markedly improves the accuracy and robustness of the echo state networks, whilst keeping the computational cost low. Echo state networks offer accurate predictions of the long-time dynamics, which would be otherwise expensive by integrating the governing equations to evaluate the time-averaged quantity to optimize. Second, we couple echo state networks with a Bayesian technique to explore the design thermoacoustic parameter space. The computational method is minimally intrusive. Third, we find the set of flame parameters that minimize the time-averaged acoustic energy of chaotic oscillations, which are caused by the positive feedback with a heat source, such as a flame in gas turbines or rocket motors. These oscillations are known as thermoacoustic oscillations. The optimal set of flame parameters is found with the same accuracy as brute-force grid search, but with a convergence rate that is more than one order of magnitude faster. This work opens up new possibilities for non-intrusive ("hands-off") optimization of chaotic systems, in which the cost of generating data, for example from high-fidelity simulations and experiments, is high.
翻译:我们开发了一个多功能优化方法, 其发现设计参数可以最大限度地减少时间平均声量的声学成本功能。 这种方法是无梯度、 模型知情和数据驱动的, 根据回声状态网络进行储油层计算。 首先, 我们分析回声状态网络的预测能力, 包括短期和长期预测动态。 第二, 我们发现完全数据驱动和模型知情的建筑都学会了混乱的声学动态, 包括时间精确度和统计性。 以物理减序模型和一种声学模式为培训提供信息, 明显提高回声状态网络的准确性和稳健性, 同时保持低计算成本的可能性。 电流状态网络提供对长期动态的准确预测, 否则, 要用管理方程式来评估时间平均数量以优化。 我们发现, 完全由巴耶思亚技术来探索混乱的声学参数。 计算方法是最小的干扰性。 第三, 我们发现一组火焰参数可以最大限度地减少回声波状态网络的准确度, 同时保持低计算成本的可能性。 电流状态网络能提供准确性预测, 否则, 由恒温源的热源、 也就是恒定的恒定的温度, 。