The intelligent detection technology driven by X-ray images and deep learning represents the forefront of advanced techniques and development trends in flaw detection and automated evaluation of light alloy castings.H...The intelligent detection technology driven by X-ray images and deep learning represents the forefront of advanced techniques and development trends in flaw detection and automated evaluation of light alloy castings.However,the efficacy of deep learning models hinges upon a substantial abundance of flaw samples.The existing research on X-ray image augmentation for flaw detection suffers from shortcomings such as poor diversity of flaw samples and low reliability of quality evaluation.To this end,a novel approach was put forward,which involves the creation of the Interpolation-Deep Convolutional Generative Adversarial Network(I-DCGAN)for flaw detection image generation and a comprehensive evaluation algorithm named TOPSIS-IFP.I-DCGAN enables the generation of high-resolution,diverse simulated images with multiple appearances,achieving an improvement in sample diversity and quality while maintaining a relatively lower computational complexity.TOPSIS-IFP facilitates multi-dimensional quality evaluation,including aspects such as diversity,authenticity,image distribution difference,and image distortion degree.The results indicate that the X-ray radiographic images of magnesium and aluminum alloy castings achieve optimal performance when trained up to the 800th and 600th epochs,respectively.The TOPSIS-IFP value reaches 78.7%and 73.8%similarity to the ideal solution,respectively.Compared to single index evaluation,the TOPSIS-IFP algorithm achieves higher-quality simulated images at the optimal training epoch.This approach successfully mitigates the issue of unreliable quality associated with single index evaluation.The image generation and comprehensive quality evaluation method developed in this paper provides a novel approach for image augmentation in flaw recognition,holding significant importance for enhancing the robustness of subsequent flaw recognition networks.展开更多
通过引入驾驶评价指标和制动压力的控制及其要求规范了驾驶行为,为提高测试的准确性以及可重复性提供了保障。利用8名具有多年底盘测功机驾驶经验的驾驶员及两台轻型汽油车,在底盘测功机上开展了大量的新欧洲驾驶循环测试(New European ...通过引入驾驶评价指标和制动压力的控制及其要求规范了驾驶行为,为提高测试的准确性以及可重复性提供了保障。利用8名具有多年底盘测功机驾驶经验的驾驶员及两台轻型汽油车,在底盘测功机上开展了大量的新欧洲驾驶循环测试(New European Driving Cycle,NEDC)和全球轻型车统一循环测试(Worldwide Harmonized Light Vehicles Test Cycle,WLTC),并以10 Hz为采样频率连续记录数据进行综合计算,得到驾驶评价指标结果。通过相关性分析,认定驾驶风格对油门扰动性的影响在NEDC工况下比在WLTC工况下的更大,主因是驾驶员在稳定工况下拥有更多的自由度。对于NEDC工况,可以通过设定IWR及EER限值来实现规范驾驶;对于WLTC工况,可以通过设定IWR和RMSSE限值来实现规范驾驶。此外,通过限制工况驾驶过程中的最大制动压力还为规范驾驶提供了有效途径。不仅为降低不同驾驶员对燃料消耗量测试的影响提供了参考,在我国汽车领域实现“双碳”目标的背景下,也为乘用车碳排放大数据采集的准确性提供了借鉴。展开更多
基金funded by the National Key R&D Program of China(2020YFB1710100)the National Natural Science Foundation of China(Nos.52275337,52090042,51905188).
文摘The intelligent detection technology driven by X-ray images and deep learning represents the forefront of advanced techniques and development trends in flaw detection and automated evaluation of light alloy castings.However,the efficacy of deep learning models hinges upon a substantial abundance of flaw samples.The existing research on X-ray image augmentation for flaw detection suffers from shortcomings such as poor diversity of flaw samples and low reliability of quality evaluation.To this end,a novel approach was put forward,which involves the creation of the Interpolation-Deep Convolutional Generative Adversarial Network(I-DCGAN)for flaw detection image generation and a comprehensive evaluation algorithm named TOPSIS-IFP.I-DCGAN enables the generation of high-resolution,diverse simulated images with multiple appearances,achieving an improvement in sample diversity and quality while maintaining a relatively lower computational complexity.TOPSIS-IFP facilitates multi-dimensional quality evaluation,including aspects such as diversity,authenticity,image distribution difference,and image distortion degree.The results indicate that the X-ray radiographic images of magnesium and aluminum alloy castings achieve optimal performance when trained up to the 800th and 600th epochs,respectively.The TOPSIS-IFP value reaches 78.7%and 73.8%similarity to the ideal solution,respectively.Compared to single index evaluation,the TOPSIS-IFP algorithm achieves higher-quality simulated images at the optimal training epoch.This approach successfully mitigates the issue of unreliable quality associated with single index evaluation.The image generation and comprehensive quality evaluation method developed in this paper provides a novel approach for image augmentation in flaw recognition,holding significant importance for enhancing the robustness of subsequent flaw recognition networks.
文摘通过引入驾驶评价指标和制动压力的控制及其要求规范了驾驶行为,为提高测试的准确性以及可重复性提供了保障。利用8名具有多年底盘测功机驾驶经验的驾驶员及两台轻型汽油车,在底盘测功机上开展了大量的新欧洲驾驶循环测试(New European Driving Cycle,NEDC)和全球轻型车统一循环测试(Worldwide Harmonized Light Vehicles Test Cycle,WLTC),并以10 Hz为采样频率连续记录数据进行综合计算,得到驾驶评价指标结果。通过相关性分析,认定驾驶风格对油门扰动性的影响在NEDC工况下比在WLTC工况下的更大,主因是驾驶员在稳定工况下拥有更多的自由度。对于NEDC工况,可以通过设定IWR及EER限值来实现规范驾驶;对于WLTC工况,可以通过设定IWR和RMSSE限值来实现规范驾驶。此外,通过限制工况驾驶过程中的最大制动压力还为规范驾驶提供了有效途径。不仅为降低不同驾驶员对燃料消耗量测试的影响提供了参考,在我国汽车领域实现“双碳”目标的背景下,也为乘用车碳排放大数据采集的准确性提供了借鉴。