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V10(1) International Transaction Journal of Engineering, Management, & Applied Sciences & Technologies
from V10(1) International Transaction Journal of Engineering Management & Applied Sciences & Technologies
by TuEngr.com
International Transaction Journal of Engineering, Management, & Applied Sciences & Technologies
Volume 10 Issue 1 (2019)
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ISSN 2228-9860 eISSN 1906-9642
http://TuEngr.com
A STUDY OF THE CONVERGENCE OF THE BEZOUT COEFFICIENTS SEARCH ALGORITHM
CHALLENGES OF EGOVERNMENT IMPLEMENTATION IN THE NIGERIAN PUBLIC SERVICE
METHODOLOGY OF CONSTRUCTION AND TREND SHAPING FOR ECONOMIC PROFILE OF POVERTY
ANALYSIS OF CLIENT DEPENDENCE (CD) AND VENDOR INNOVATION (VI) AND THE MODERATING ROLE OF THE CORPORATE CULTURE
CONCEPTUAL APPROACHES TO ECONOMIC RISK MANAGEMENT AT THE ENTERPRISES OF AGRO-INDUSTRIAL COMPLEX IN BELGOROD REGION
EFFECT OF CORPORATION STRATEGY ON MARKET REACTION TO EARNING IN THE ACCEPTED CORPORATIONS OF TEHRAN STOCK EXCHANGE
STATISTICAL-BASED ANALYSIS ON EFFECTS OF THE DIMENSIONS OF HUMAN CAPITAL ON MARKETING CAPABILITIES IN PRIVATE BANKS
MULTI-CRITERIA STATISTICAL-BASED ANALYSIS ON THE EFFECT OF OWNERSHIP STRUCTURE AS A MODERATING FACTOR ON THE RELATIONSHIP BETWEEN FREE CASH FLOW AND APPLYING THE SUITABLE ASSETS
ACCURACY ASSESSMENT OF L-BAND ATLAS GNSS SYSTEM IN THAILAND
ROLLER BEARING FAULT DETECTION USING EMPIRICAL MODE DECOMPOSITION AND ARTIFICIAL NEURAL NETWORK METHODS
REGIONAL ECONOMIC COMPLEX MANAGEMENT FEATURES OF RUSSIA
DEVELOPING AN EVIDENCE-BASED STRATEGIC DECISION- MAKING MODEL IN INSURANCE COMPANIES
ECOLOGICAL SETTLEMENTS AS ONE OF PERSPECTIVE FORMS FOR RUSSIA RURAL TERRITORY MULTIFUNCTIONAL DEVELOPMENT
MECHANICAL STRENGTH EVALUATION OF PULSED ND- YAG LASER WELDING OF AUSTENITIC STAINLESS STEEL
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Cover photos are Schematic diagram of the designed multilayer perceptron (MLP) and Confusion matrix using a test set data (neural network output), in this issue paper, entitled ROLLER BEARING FAULT DETECTION USING EMPIRICAL MODE DECOMPOSITION AND ARTIFICIAL NEURAL NETWORK METHODS, by Zarekar et al.