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An integrated method of flammable cloud size prediction for offshore platforms

机译:易燃云尺寸预测对海岸平台的综合方法

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Response Surface Method (RSM) has been widely used for flammable cloud size prediction as it can reduce computational intensity for further Explosion Risk Analysis (ERA) especially during the early design phase of offshore platforms. However, RSM encounters the overfitting problem under very limited simulations. In order to overcome the disadvantage of RSM, Bayesian Regularization Artificial Neural (BRANN)-based model has been recently developed and its robustness and efficiency have been widely verified. However, for ERA during the early design phase, there seems to be room to further reduce the computational intensity while ensuring the model's acceptable accuracy. This study aims to develop an integrated method, namely the combination of Center Composite Design (CCD) method with Bayesian Regularization Artificial Neural Network (BRANN), for flammable cloud size prediction. A case study with constant and transient leakages is conducted to illustrate the feasibility and advantage of this hybrid method. Additionally, the performance of CCD-BRANN is compared with that of RSM. It is concluded that the newly developed hybrid method is more robust and computational efficient for ERAs during early design phase.
机译:响应面法(RSM)已广泛用于易燃云尺寸预测,因为它可以降低进一步爆炸风险分析(ERA)的计算强度,特别是在海上平台的早期设计阶段。但是,RSM在非常有限的模拟下遇到过拟合问题。为了克服RSM的缺点,最近已经开发了贝叶斯正则化人工神经(Brann)基础的模型,其鲁棒性和效率得到了广泛的验证。然而,对于早期设计阶段的时代,似乎是进一步降低计算强度的空间,同时确保模型的可接受的准确性。本研究旨在开发一种综合方法,即中心复合设计(CCD)方法与贝叶斯正则化人工神经网络(Brann)的组合,用于易燃云尺寸预测。进行了恒定和瞬态泄漏的案例研究以说明这种混合方法的可行性和优点。此外,CCD-Brann的性能与RSM的性能进行了比较。结论是,新开发的杂种方法在早期设计阶段期间的时代更加坚固和计算高效。

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