Besseris George J
Advanced Industrial & Manufacturing Systems Program, Mechanical Engineering Department, Piraeus University of Applied Sciences, Greece.
Kingston University, London, UK.
Heliyon. 2018 Mar 19;4(3):e00551. doi: 10.1016/j.heliyon.2018.e00551. eCollection 2018 Mar.
Generalized regression neural networks (GRNN) may act as crowdsourcing cognitive agents to screen small, dense and complex datasets. The concurrent screening and optimization of several complex physical and sensory traits of bread is developed using a structured Taguchi-type micro-mining technique. A novel product outlook is offered to industrial operations to cover separate aspects of smart product design, engineering and marketing. Four controlling factors were selected to be modulated directly on a modern production line: 1) the dough weight, 2) the proofing time, 3) the baking time, and 4) the oven zone temperatures. Concentrated experimental recipes were programmed using the Taguchi-type L(3) OA-sampler to detect potentially non-linear multi-response tendencies. The fused behavior of the master-ranked bread characteristics behavior was smart sampled with GRNN-crowdsourcing and robust analysis. It was found that the combination of the oven zone temperatures to play a highly influential role in all investigated scenarios. Moreover, the oven zone temperatures and the dough weight appeared to be instrumental when attempting to synchronously adjusting all four physical characteristics. The optimal oven-zone temperature setting for concurrent screening-and-optimization was found to be 270-240 °C. The optimized (median) responses for loaf weight, moisture, height, width, color, flavor, crumb structure, softness, and elasticity are: 782 g, 34.8 %, 9.36 cm, 10.41 cm, 6.6, 7.2, 7.6, 7.3, and 7.0, respectively.
广义回归神经网络(GRNN)可作为众包认知代理来筛选小型、密集且复杂的数据集。利用结构化的田口型微挖掘技术,对面包的几种复杂物理和感官特性进行同步筛选和优化。为工业运营提供了一种新颖的产品前景,以涵盖智能产品设计、工程和营销的各个方面。选择了四个控制因素直接在现代生产线上进行调节:1)面团重量,2)醒发时间,3)烘焙时间,4)烤箱区域温度。使用田口型L(3) OA采样器对集中的实验配方进行编程,以检测潜在的非线性多响应趋势。通过GRNN众包和稳健分析对排名靠前的面包特征行为的融合行为进行智能采样。结果发现,烤箱区域温度的组合在所有研究场景中都起着高度重要的作用。此外,在试图同步调整所有四个物理特性时,烤箱区域温度和面团重量似乎很重要。发现用于同步筛选和优化的最佳烤箱区域温度设置为270 - 240°C。面包重量、水分、高度、宽度、颜色、风味、面包心结构、柔软度和弹性的优化(中位数)响应分别为:782克、34.8%、9.36厘米、10.41厘米、6.6、7.2、7.6、7.3和7.0。