coal based machine

(PDF) Recognition Methods for Coal and Coal Gangue Based ... ResearchGate

(PDF) Recognition Methods for Coal and Coal Gangue Based ... ResearchGate

sieving machine sor ts raw coal into coal equal to or greate r than 100 mm and less than 100 mm; a transp ortation syste m is used to transport the coa l from underground to grou nd; and

Review on Machine LearningBased Underground Coal Mines Gas Hazard ...

Review on Machine LearningBased Underground Coal Mines Gas Hazard ...

The underground coal mines (UCM) exhibit many lifethreatening hazards for mining workers. In contrast, gas hazards are among the most critical challenges to handle. This study presents a comparative study of the sensor fusion methodologies related to UCM gas hazard prediction and classification. The study provides a brief theoretical background of the existing methodologies and their usage to ...

Coal Classification Method Based on Improved Local Receptive Field ...

Coal Classification Method Based on Improved Local Receptive Field ...

Coal Classification Method Based on Improved Local Receptive FieldBased Extreme Learning Machine Algorithm and VisibleInfrared Spectroscopy PMC Journal List ACS Omega (40); 2020 Oct 13 PMC As a library, NLM provides access to scientific literature.

Coal Mine Safety Evaluation Based on Machine Learning: A BP Neural ...

Coal Mine Safety Evaluation Based on Machine Learning: A BP Neural ...

Coal Mine Safety Evaluation Based on Machine Learning: A BP Neural Network Model As the core of artificial intelligence, machine learning has strong application advantages in multicriteria intelligent evaluation and decisionmaking. The level of sustainable development is of great significance to the safety evaluation of coal mining enterprises.

Multiinformation online detection of coal quality based on machine ...

Multiinformation online detection of coal quality based on machine ...

This paper presents an exploratory study employing a benchscale approach to detect the multiinformation of coal quality online by machine vision simultaneously, including particle size distribution, density distribution, the ash content of each density fraction, and the total ash content.

Coil Machining: Pros and Cons Metal Working World Magazine

Coil Machining: Pros and Cons Metal Working World Magazine

The main obstacle for machine and equipment use that allow coil processing is the quantity to be processed. Naturally, when only a few parts need to be made, sheet metal is the best solution. But even in the case of mediumsized batches, the coil technology is still not very successful, as coil replacement and "production changeover" times ...

Exclusive: India scrambles to add coalfired power capacity, avoid ...

Exclusive: India scrambles to add coalfired power capacity, avoid ...

India aims to add 17 gigawatts of coalbased power generation capacity in the next 16 months, its fastest pace in recent years, to avert outages due to a record rise in power demand, according to ...

Hybrid CNNLSTM and IoTbased coal mine hazards monitoring and ...

Hybrid CNNLSTM and IoTbased coal mine hazards monitoring and ...

IoTenabled sensor devices and machine learning methods have played an essential role in monitoring and forecasting mine hazards. In this paper, a prediction model has been proposed for improving the safety and productivity of underground coal mines using a hybrid CNNLSTM model and IoTenabled sensors. The hybrid CNNLSTM model can extract ...

Prediction of spontaneous combustion susceptibility of coal seams based ...

Prediction of spontaneous combustion susceptibility of coal seams based ...

Spontaneous combustion of coal leading to mine fire is a major problem in most of the coal mining countries in the world. It causes major loss to the Indian economy. The liability of coal to spontaneous combustion varies from place to place and mainly depends on the coal intrinsic properties and other geomining factors. Hence, the prediction of spontaneous combustion susceptibility of coal is ...

Detecting coal content in gangue via machine vision and genetic ...

Detecting coal content in gangue via machine vision and genetic ...

A novel approach based on binocular machine vision and genetic algorithmbackpropagation neural network (GABPNN) was proposed. First, the sample image was segmented, and each region was judged to be coal or gangue. ... Prediction of density and sulfur content level of highsulfur coal based on image processing. Powder Technol., 407 (2022), p ...

Demographic and Geographic Characteristics of Green Stormwater ...

Demographic and Geographic Characteristics of Green Stormwater ...

This report presents the results of an exploratory machine learningbased analysis of green stormwater infrastructure asset data across five cities in the United States. Within each city, authors evaluated the location of installed green stormwater infrastructure based on the demographic and land use characteristics of the surrounding area.

Analysis of feature selection techniques for prediction of boiler ...

Analysis of feature selection techniques for prediction of boiler ...

Monitoring and enforcing the performance of equipment in coalbased thermal power plants play a vital role in operational management. As the coalbased power plant is a nonlinear system involving multiple inputs and multiple outputs, the standard and typical identification methods tend to deviate. This can happen due to factors such as strong coupling, multivariable characteristics, time ...

Frontiers | A Study on China coal Price forecasting based on CEEMDAN ...

Frontiers | A Study on China coal Price forecasting based on CEEMDAN ...

CatBoost model. CatBoost is a new open source machine learning library proposed by Russian scholar Yandex in 2017, which is based on Categorical and Boosting (Prokhorenkova et al., 2018), a new gradient boosting algorithm that is implemented as a symmetric decision treebased ordered boosting, it improves the gradient estimation of the traditional Gradient Boosting Decision Tree ...

Development of novel dynamic machine learningbased optimization of a ...

Development of novel dynamic machine learningbased optimization of a ...

article{osti_, title = {Development of novel dynamic machine learningbased optimization of a coalfired power plant}, author = {Blackburn, Landen D. and Tuttle, Jacob F. and Andersson, Klas and Fry, Andrew and Powell, Kody M.}, abstractNote = {The increasing fraction of intermittent renewable energy in the electrical grid is resulting in coalfired boilers now routinely ramp up and down.

(PDF) Detection of coal content in gangue via image analysis and ...

(PDF) Detection of coal content in gangue via image analysis and ...

In our previous work, an approach based on image analysis and particle swarm optimizationsupport vector machine was presented (Wang et al. 2021) to detect the coalcarrying rate in gangue ...

Coal analysis based on visibleinfrared spectroscopy and a deep neural ...

Coal analysis based on visibleinfrared spectroscopy and a deep neural ...

Product quality monitoring is one of the most critical demands in the coal industry. Conventional coal quality analysis is offline, laborious, and lagging behind coal production. Using machine vision for determining ash content in coal has been recently developed. However, there are some challenges in the model design due to its task complexity.

Research on a Coal Seam Gas Content Prediction Method Based on an ...

Research on a Coal Seam Gas Content Prediction Method Based on an ...

Coal resources play a crucial role as an energy source in China and have contributed immensely to the country's economic development [1,2], and given China's current energy structure, coal is expected to maintain its dominant position in the energy supply for the foreseeable future [].Based on statistics from the National Bureau of Statistics, China is endowed with abundant coal resources ...

Prediction of coalbed methane production based on deep learning

Prediction of coalbed methane production based on deep learning

The machine learning models were optimized using hyperparameter tuning, and the most successful model was selected based on its regression and computational cost performance. Sensitivity analysis was conducted to investigate the performance of the coal properties on total desorbed gas content.

Coal gangue detection and recognition algorithm based on deformable ...

Coal gangue detection and recognition algorithm based on deformable ...

At present, coal gangue sorting technology based on machine learning is widely used . Liu C et al. established a comprehensive identification model of different ores and a support vector machine model through the texture characteristics of an image and completed the identification of different ores, thereby improving the efficiency of coal and ...

Coal liquefaction Wikipedia

Coal liquefaction Wikipedia

Coal liquefaction is a process of converting coal into liquid hydrocarbons: liquid fuels and process is often known as "Coal to X" or "Carbon to X", where X can be many different hydrocarbonbased products. However, the most common process chain is "Coal to Liquid Fuels" (CTL).

A new machine vision detection method for identifying and ... Springer

A new machine vision detection method for identifying and ... Springer

Large foreign object transporting by coal mine conveyor belt may lead to production safety hazards. To reduce safety accidents during coal mining, a large foreign object detection method based on machine vision is proposed in this paper. An adaptive weighted multiscale Retinex (MSR) image enhancement algorithm is proposed to improve the captured image quality of the belt conveyor line. An ...

Quality control of microseismic Pphase arrival picks in coal mine ...

Quality control of microseismic Pphase arrival picks in coal mine ...

In this study, we developed an automatic Ppick quality control model based on machine learning to identify useable/unusable Ppicks. We used five waveform parameters, including signaltonoise ratio (SNR), signaltonoise variance ratio (SNVR), Pphase startingup slope ( K p ), shorttime zerocrossing rate (ZCR) and peak amplitude ( P a ) to ...

Intelligent Proximate Analysis of Coal Based on NearInfrared ...

Intelligent Proximate Analysis of Coal Based on NearInfrared ...

The nearinfrared spectroscopy (NIRS) technique provides a rapid and nondestructive method for coal proximate analysis. We exploit two regression methods, random forest (RF) and extreme learning machine (ELM), to model the relationships among spectral data and proximate analysis parameters. In addition, given the poor stability and robustness ...

Rapid Classification and Quantification of Coal by Using Laser ... MDPI

Rapid Classification and Quantification of Coal by Using Laser ... MDPI

Clustering, Classification, and Quantification of Coal Based on Machine Learning Clustering Models. Clustering is a type of unsupervised learning method, which extracts the data features only based on the LIBS spectra instead of category labels, including principal component analysis (PCA), Kmeans clustering, DBSCAN clustering, etc. The ...

"Machine learningbased classification of dual fluorescence signals ...

Muscle stem cells (MuSCs) reside in a niche, which generates various signals essential for regeneration of skeletal muscle. In this manuscript, Togninalli, Ho, and Madl developed a dual fluorescence imaging time lapse (DualFLIT) microscopy approach that leverages machine learning to track single cell fate, their analysis revealed that the lipid metabolite, prostaglandin ...

Final Colorado coal plant would close, renewables would rise in Tri ...

Final Colorado coal plant would close, renewables would rise in Tri ...

Coloradobased TriState Generation and Transmission Association is proposing an energy plan that will close two coal power plants and significantly boost the amount of renewable energy sources on its system.. TriState filed the new electric resource plan with state regulators Friday. The wholesale power supplier is seeking up to 970 million in grants and loans through the Department of ...

4 Kinds Most Popular Charcoal Briquette Machine For Sale!

4 Kinds Most Popular Charcoal Briquette Machine For Sale!

Honeycomb Coal Briquette Machine. Honeycomb coal briquette machine can compress small granular coal and dust into coal blocks with holes. Its mold can be changed easily to produce cylindrical shapes and square shape briquettes. The coal briquette diameter range is 90250mm with different hole quantities.

Quantitative evaluation of the indexes contribution to coal and gas ...

Quantitative evaluation of the indexes contribution to coal and gas ...

Wu et al. [44] proposed an outburst prediction method based on optimized SVM in 2020, and Zhou et al. [45] used the TreeNet algorithm to predict coal and gas outbursts. The prediction of coal and gas outbursts based on machine learning has achieved good results on the data provided by the author, but it still has two shortcomings.

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