In order to overcome the problems of high data noise, low prediction accuracy and long prediction time in the traditional short-term prediction method of lighting energy consumption of large buildings, a short-term pr...
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In order to overcome the problems of high data noise, low prediction accuracy and long prediction time in the traditional short-term prediction method of lighting energy consumption of large buildings, a short-term prediction method of lighting energy consumption of large buildings based on time series analysis is proposed in this paper. The improved threshold function is used to denoise the data, and the fuzzy c-means clustering algorithm is used to cluster the denoised data. The time series analysis method is used to construct the self-excitation threshold autoregressive model. When the model parameters are optimal, the clustered data are input into the model to output the short-term prediction results of lighting energy consumption of large buildings. The experimental results show that compared with the traditional method, the average data noise of this method is 12.3 dB, the prediction accuracy remains above 94% and the average prediction time is only 57 ms.
This paper addresses the criterion of the robust controller design for the solution of a number of fuzzy c-means clustering algorithms, which are robust to plant parameter disturbances and controller gain variations. ...
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This paper addresses the criterion of the robust controller design for the solution of a number of fuzzy c-means clustering algorithms, which are robust to plant parameter disturbances and controller gain variations. The control and stability problems in the present nonlinear systems are studied based on a Takagi-Sugeno (T-S) fuzzy model. A lately and important proposed integral inequality is considered and selected according to the method of the free weight matrix, with these comparatively flexible stability criteria which are determined in the numerical form of linear matrix inequalities (LMIs). Under the condition of the premise in which the controller and the control system partake the same rules, the method does not inquire the same number of membership functions and mathematical rules. In addition, the improved control is used for large-scale nonlinear systems, where the stability criterion of the closed T-S fuzzy system is obtained through LMI and rearranged through the membership function for machine learning . The close-loop controller criteria are derived by using the Lyapunov energy functions to guarantee the stability of the system . Eventually, an instance is presented to reveal the efficacy of evolution.
Input variables selection(IVS) is proved to be pivotal in nonlinear dynamic system modeling. In order to optimize the model of the nonlinear dynamic system, a fuzzy modeling method for determining the premise structur...
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Input variables selection(IVS) is proved to be pivotal in nonlinear dynamic system modeling. In order to optimize the model of the nonlinear dynamic system, a fuzzy modeling method for determining the premise structure by selecting important inputs of the system is studied. Firstly, a simplified two stage fuzzycurves method is proposed, which is employed to sort all possible inputs by their relevance with outputs, select the important input variables of the system and identify the ***, in order to reduce the complexity of the model, the standard fuzzy c-means clustering algorithm and the recursive least squares algorithm are used to identify the premise parameters and conclusion parameters, respectively. Then, the effectiveness of IVS is verified by two well-known issues. Finally, the proposed identification method is applied to a realistic variable load pneumatic system. The simulation experiments indi cate that the IVS method in this paper has a positive influence on the approximation performance of the Takagi-Sugeno(T-S) fuzzy modeling.
Education greatly aids in the process of students' growth;therefore, education institutions try to provide high-quality education to their students. A possible remedy to provide high-quality education is by discov...
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Education greatly aids in the process of students' growth;therefore, education institutions try to provide high-quality education to their students. A possible remedy to provide high-quality education is by discovering knowledge from educational data. However, accurately evaluating students' performance is very challenging due to different sources and structures of educational data. In addition, different teaching strategies are required because students' learning ability are different. One way to discover the hidden knowledge from educational data is the use of clusteringalgorithms, which are capable of mining interesting patterns from educational data. Thus, this study presents a fuzzy c-means clustering algorithm using 2D and 3D clustering to evaluate students' performance based on their examination results (the examination grades from college of computer Science and Technology, Huaqiao University for students enrolled in year 2014). Based on the experimental results from 2D and 3D clustering for evaluating students' performance, the educators can better understand the students' performance so as to build a pedagogical basis for decisions. Students can also receive some recommendations from the mining results about their performance.
Gravity inversion requires much computation,and inversion results are often *** first problem is often due to the large number of grid *** detection method,i.e.,tilt angle method of analytical signal amplitude(TAS),he...
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Gravity inversion requires much computation,and inversion results are often *** first problem is often due to the large number of grid *** detection method,i.e.,tilt angle method of analytical signal amplitude(TAS),helps to identify the boundaries of underground geological anomalies at different depths,which can be used to optimize the grid and reduce the number of grid *** requirement of smooth inversion is that the boundaries of the meshing area should be continuous rather than *** this paper,the optimized meshing strategy is improved,and the optimized meshing region obtained by the TAS is changed to a regular region to facilitate the smooth *** the second problem,certain constraints can be used to improve the accuracy of *** results of analytic signal amplitude(ASA)are used to delineate the central distribution of geological *** propose a new method using the results of ASA to perform local constraints to reduce the non-uniqueness of *** guided fuzzyc-means(FcM)clusteringalgorithmcombined with priori petrophysical information is also used to reduce the non-uniqueness of gravity *** Open Acc technology is carried out to speed up the computation for parallelizing the serial program on *** general,the TAS is used to reduce the number of grid *** local weighting and priori petrophysical constraint are used in conjunction with the FcM algorithm during the inversion,which improves the accuracy of *** inversion is accelerated by the Open Acc technology on *** proposed method is validated using synthetic data,and the results show that the efficiency and accuracy of gravity inversion are greatly improved by using the proposed method.
Purpose This paper aims to address the robust controller design problem for a class of fuzzy c-means clustering algorithm that is robust against both the plant parameter perturbations and controller gain variations. B...
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Purpose This paper aims to address the robust controller design problem for a class of fuzzy c-means clustering algorithm that is robust against both the plant parameter perturbations and controller gain variations. Based on Takagi-Sugeno (T-S) fuzzy model description, the stability and control problems of nonlinear systems are studied. Design/methodology/approach A recently proposed integral inequality is selected based on the free-weight matrix, and the less conservative stability criterion is given in the form of linear matrix inequalities (LMIs). Findings Under the premise that the controller and the system share the same, the method does not require the number of membership functions and rules. Originality/value The closed-loop controller criterion is derived by energy functions to guarantee the stability of systems. Finally, an example is given to demonstrate the results.
The present study reports an investigation on identification of priority areas of improvement for small passenger car segment in the Indian market. A total of 750 responses on importance and satisfaction rating of 16 ...
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The present study reports an investigation on identification of priority areas of improvement for small passenger car segment in the Indian market. A total of 750 responses on importance and satisfaction rating of 16 attributes in a 7-point Likert-type ordinal rating scale were collected from small car owners in Delhi using a paper and pencil instrument. Revised importance-performance analysis with fuzzy c-means clustering algorithm was used to identify the priority areas of improvement in small passenger cars. The analysis technique effectively identified the factor structure of consumer satisfaction and derived various management schemes for small passenger cars by analysing consumers' importance and satisfaction data. The priority areas of improvement were obtained by comparing the factor structure with the management scheme. The results indicate that safety, security and advanced vehicle technology options are the priority areas of improvement for small passenger cars. The study identified that the consumers are satisfied with the performance of purchase price, driving range, annual fuel cost, annual maintenance cost, top speed, seating comfort, appearance/style, emission, acceleration time and resale value in small cars, indicating the need to retain these attributes at their present levels to maintain competitive advantage. The engine power is identified under 'possible overkill', which indicates an opportunity for automobile manufacturers to possibly reduce the engine power to save some resources and reallocate the same for improvement of priority attributes. The findings of the present study provide valuable insight into the product specifications that the automobile manufacturers should focus on, to make new-generation small cars more attractive to Indian consumers.
Uncertain information in the securities market exhibits fuzziness. In this article, expected returns and liquidity are considered as trapezoidal fuzzy numbers. The possibility mean and mean absolute deviation of expec...
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Uncertain information in the securities market exhibits fuzziness. In this article, expected returns and liquidity are considered as trapezoidal fuzzy numbers. The possibility mean and mean absolute deviation of expected returns represent the returns and risks of securities assets, while the possibility mean of expected turnover represents the liquidity of securities assets. Taking into account practical constraints such as cardinality and transaction costs, this article establishes a fuzzy portfolio model with cardinality constraints and solves it using the differential evolution algorithm. Finally, using fuzzyc -meansclusteringalgorithm, 12 stocks are selected as empirical samples to provide numerical calculation examples. At the same time, fuzzyc -meansclusteringalgorithm is used to cluster the stock yield data and analyse the stock data comprehensively and accurately, which provides a reference for establishing an effective portfolio.
Diabetes is a metabolic sickness that remains to be a major universal problem because it influences the health of the entire population. Over the years several researchers have attempted to build a model for predictin...
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ISBN:
(数字)9781665408370
ISBN:
(纸本)9781665408387;9781665408370
Diabetes is a metabolic sickness that remains to be a major universal problem because it influences the health of the entire population. Over the years several researchers have attempted to build a model for predicting diabetes accurately. However, this field study remains a challenge because of the unavailability of dataset and prediction models which forces the researchers to utilize ML (Machine Learning) algorithm and Big data analytics. The primary objective of the study was to identify how ML and Big data analytics can be adopted in diabetes. The evaluation of outcomes demonstrates that the proposed ML-based technique might achieve 8.6% of accuracy. The authors performed a review of literature on the ML models and came out with the suggestion of an Automatic Intelligent method for the prediction of diabetes based on the findings. The authors explored ML approaches and proposed and developed an intelligent ML-based architecture for diabetes prediction. In this work, the authors used fuzzy mean, SVM learning models for the prediction of diabetes. A firefly algorithm optimized classifies was utilized for selecting the best features. It is proposed in the work, that an exclusive automatic intelligent optimize diabetic prediction model is built by utilizing ML approaches. The framework was created following a thorough analysis of existing prediction approaches in the literature and assessing their relevance to diabetes. The authors presented the training methods, model evaluation strategies, and the challenges allied to the prediction of diabetes also the remedies they provide by using the framework. Health professionals, students, researchers, and stakeholders working in diabetes forecast research development may benefit from the findings of the study. The proposed work achieves an accuracy of 86 percent with low error rates.
In recent years, with the change of lifestyle in Europe and America, the incidence of breast cancer in chinese women is increasing. In order to find the model of breast cancer image screening and diagnosis with higher...
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In recent years, with the change of lifestyle in Europe and America, the incidence of breast cancer in chinese women is increasing. In order to find the model of breast cancer image screening and diagnosis with higher accuracy and better classification performance, this paper mainly constructs the breast cancer cT image detection model and the breast cancer screening model based on the convolution and deconvolution neural network (cDNN) through the convolution neural network (cNN). In this paper, the fuzzy c-means clustering algorithm (FcM) is used to improve and optimize the image of breast cancer, and the experimental results are analyzed. The optimized kernel fuzzy c-means clustering algorithm was tested on a common dataset to segment the region of interest more accurately. Our experiments show that the new deep learning model of this paper improves the automaticclassification performance of breast cancer. In this paper, the research results of deep learning are applied to the medical field, and a new method based on cNN model for breast cancer screening and diagnosis is proposed, which provides a new idea for improving the artificial intelligence assisted medical diagnosis method.
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