We provide a MATLAB computer code for training artificial neural network (ANN) with layer (hidden layer) architecture. Currently, the ANN application to solving geophysical problems have been confined to the 2-layer, i.e. 1-hidden layer, architecture because there are no open source software codes for higher numbered layer architecture. The restriction to the 2-layer architecture comes with the attendant model error due to insufficient hidden neurons to fully define the ANN machines. The -hidden layer ANN has a general architecture whose sensitivity is the accumulation of the backpropagation of the error between the feedforward output and the target patterns. The trained ANN machine can be retrieved by the gradient optimization method namely: Levenberg-Marquardt, steepest descent or conjugate gradient methods. Our test results on the Poisson's ratio (as a function of compressional and shear wave velocities) machines with 2-, 3- and 4-layer ANN architectures reveal that the machines with higher number of layers outperform those with lower number of layers. Specifically, the 3- and 4-layer ANN machines have accuracy, predicting the lithology and fluid identification in the oil and gas industry by means of the Poisson's ratio, whereas the 2-layer ANN machines poorly predict the results with as large error as . These results therefore reinforce our belief that this open source code will facilitate the training of accurate hidden layer ANN sophisticated machines with high performance and quality delivery of geophysical solutions. Moreover, the easy portability of the functions of the code into other software will enhance a versatile application and further research to improve its performance.
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http://dx.doi.org/10.1016/j.heliyon.2020.e04108 | DOI Listing |
Sensors (Basel)
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Department of Electrical and Automation, Shanghai Maritime University, Shanghai 201306, China.
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December 2024
Mechanical Engineering Department, Dunarea de Jos University of Galati, 800201 Galati, Romania.
This paper presents an analysis of four clutch disc friction materials (from different manufacturers) used in manual transmissions. Scanning electron microscopy and energy-dispersive X-ray spectroscopy were employed for the microstructural and chemical characterisation of the friction materials. To reveal the tribological properties of the selected clutch discs, three measurements of the friction coefficient between the material and the cast iron disc were conducted.
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December 2024
Ribeirão Preto School of Pharmaceutical Sciences, University of São Paulo, São Paulo 05508-220, Brazil.
Biofilms are of great concern for the meat industry because, despite the implementation of control plans, they remain important hotspots of contamination by foodborne pathogens, highlighting the need to better understand the ecology of these microecosystems. The objective of this paper was to critically survey the recent scientific literature on microbial biofilms of importance for meat safety and quality, also pointing out the most promising methods to combat them. For this, the databases PubMed, Scopus, Science Direct, Web of Science, and Google Scholar were surveyed in a 10-year time frame (but preferably papers less than 5 years old) using selected keywords relevant for the microbiology of meats, especially considering bacteria that are tolerant to cleaning and sanitization processes.
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Interdisciplinary Lab for Mathematical Ecology and Epidemiology & Department of Mathematical and Statistical Sciences, University of Alberta, Canada. Electronic address:
Prompt and accurate monitoring of cyanobacterial blooms is essential for public health management and understanding aquatic ecosystem dynamics. Remote sensing, in particular satellite observations, presents a good alternative for continuous monitoring. This study employs multispectral images from the Sentinel-2 constellation alongside ERA5-Land to enable broad-scale data acquisition.
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