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Number of results: 6
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Abstract

This study is aimed at evaluating the applicability of Artificial Neural Network (ANN) model technique for river discharge forecasting. Feed-forward multilayer perceptron neural network trained with back-propagation algorithm was employed for model development. Hydro-meteorological data for the Imo River watershed, that was collected from the Anambra-Imo River Basin Development Authority, Owerri – Imo State, South-East, Nigeria, was used to train, validate and test the model. Coefficients of determination results are 0.91, 0.91 and 0.93 for training, validation and testing periodsrespectively. River discharge forecasts were fitted against actual discharge data for one to five lead days. Model results gave R2 values of 0.95, 0.95, 0.92, 0.96 and 0.94 for first, second, third, fourth, and fifth lead days of forecasts, respectively. It was generally observed that the R2 values decreased with increase in lead days for the model. Generally, this tech-nique proved to be effective in river discharge modelling for flood forecasting for shorter lead-day times, especially in areas with limited data sets.

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Authors and Affiliations

Arinze A. Obasi
Kingsley N. Ogbu
Louis C. Orakwe
Isiguzo E. Ahaneku
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Abstract

Effects of infrared power output and sample mass on drying behaviour, colour parameters, ascorbic acid degradation, rehydration characteristics and some sensory scores of spinach leaves were investigated. Within both of the range of the infrared power outputs, 300–500 W, and sample amounts, 15–60 g, moisture content of the leaves was reduced from 6.0 to 0.1±(0.01) kg water/kg dry base value. It was recorded that drying times of the spinach leaves varied between 3.5–10 min for constant sample amount, and 4–16.5 min for constant power output. Experimental drying data obtained were successfully investigated by using artificial neural network methodology. Some changes were recorded in the quality parameters of the dried leaves, and acceptable sensory scores for the dried leaves were observed in all of the experimental conditions.

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Authors and Affiliations

Ayse Sarimeseli
Mehmet Yuceer
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Abstract

Over the past two decades, artificial neural networks (ANN) have exhibited a significant progress in predicting and modeling non-linear hydrological applications, such as the rainfall-runoff process which can provide useful contribution to water resources planning and management. This research aims to test the practicability of using ANNs with various input configurations to model the rainfall-runoff relationship in the Seybouse basin located in a semi-arid region in Algeria. Initially, the ANNs were developed for six sub-basins, and then for the complete watershed, considering four different input configurations. The 1st (ANN IP) considers only precipitation as an input variable for the daily flow simulation. The 2nd (ANN II) considers the 2nd variable in the model input with precipitation; it is one of the meteorological parameters (evapotranspiration, temperature, humidity, or wind speed). The third (ANN IIIP,T,HUM) considers a combination of temperature, humidity, and precipitation. The last (ANN VP,ET,T,HUM,Vw) consists in collating different meteorological parameters with precipitation as an input variable. ANN models are made for the whole basin with the same configurations as specified above. Better flow simulations were provided by (ANN IIP,T) and (ANN IIP,Vw) for the two stations of Medjez-Amar II and Bordj-Sabath, respectively. However, the (ANN VP,ET,T,HUM,Vw)’s application for the other stations and also for the entire basin reflects a strategy for the flow simulation and shows enhancement in the prediction accuracy over the other models studied. This has shown and confirmed that the more input variables, as more efficient the ANN model is.
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Authors and Affiliations

Yamina Aoulmi
1
ORCID: ORCID
Nadir Marouf
1
ORCID: ORCID
Mohamed Amireche
1
ORCID: ORCID

  1. University of Larbi-Ben-M’hidi, Faculty of Sciences and Applied Sciences, Department of Hydraulic, Laboratory of Ecology and Environment, PO Box 358, 04000 Oum El Bouaghi, Algeria
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Abstract

This article accounts for the development of a powerful artificial neural network (ANN) model, designed for the prediction of relative humidity levels, using other meteorological parameters such as the maximum temperature, minimum temperature, precipitation, wind speed, and intensity of solar radiation in the Rabat-Kenitra region (a coastal area where relative humidity is a real concern). The model was applied to a database containing a daily history of five meteorological parameters collected by nine stations covering this region from 1979 to mid-2014.
It has been demonstrated that the best performing three-layer (input, hidden, and output) ANN mathematical model for the prediction of relative humidity in this region is the multi-layer perceptron (MLP) model. This neural model using the Levenberg–Marquard algorithm, with an architecture of [5-11-1] and the transfer functions Tansig in the hidden layer and Purelin in the output layer, was able to estimate relative humidity values that were very close to those observed. This was affirmed by a low mean squared error ( MSE) and a high correlation coefficient ( R), compared to the statistical indicators relating to the other models developed as part of this study.
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Authors and Affiliations

Kaoutar El Azhari
1
ORCID: ORCID
Badreddine Abdallaoui
2
Ali Dehbi
1
ORCID: ORCID
Abdelaziz Abdalloui
1
ORCID: ORCID
Hamid Zineddine
1

  1. Moulay Ismail University, Faculty of Sciences, Zitoune, 50000, Meknes, Morocco
  2. University of Oxford, Mathematical Institute, Oxford, United Kingdom
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Abstract

An artificial neural network (ANN) model was developed to predict the tensile properties of dual-phase steels in terms of alloying elements and microstructural factors. The developed ANN model was confirmed to be more reasonable than the multiple linear regression model to predict the tensile properties. In addition, the 3D contour maps and an average index of the relative importance calculated by the developed ANN model, demonstrated the importance of controlling microstructural factors to achieve the required tensile properties of the dual-phase steels. The ANN model is expected to be useful in understanding the complex relationship between alloying elements, microstructural factors, and tensile properties in dual-phase steels.
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Bibliography

[1] H.L. Kim, S.H. Bang, J.M. Choi, N.H. Tak, S.W. Lee, S.H. Park, Met. Mater. Int. 26, 1757-1765 (2020).
[2] S.I. Lee, J. Lee, B. Hwang, Mater. Sci. Eng. A 758, 56-59 (2019).
[3] S.I. Lee, S.Y. Lee, J. Han, B. Hwang, Mater. Sci. Eng. A 742, 334-343 (2019).
[4] S.I. Lee, S.Y. Lee, S.G. Lee, H.G. Jung, B. Hwang, Met. Mater. Int. 24, 1221-1231 (2018).
[5] S.Y. Lee, S.I. Lee, B. Hwang, Mater. Sci. Eng. A 711, 22-28 (2018).
[6] W . Bleck, S. Papaefthymiou, A. Frehn, Steel Res. Int. 75, 704-710 (2004).
[7] M .J Jang, H. Kwak, Y.W Lee, Y.J. Jeong, J. Choi, Y.H. Jo, W.M. Choi, H.J. Sung, E.Y. Yoon, S. Praveen, S. Lee, B.J. Lee, M.I. Abd El Aal, H.S. Kim, Met. Mater. Int. 25, 277-284 (2019).
[8] N. Saeidi, M. Jafari, J.G. Kim, F. Ashrafizadeh, H.S. Kim, Met. Mater. Int. 26, 168-178 (2020).
[9] M . Soleimani, H. Mirzadeh, C. Dehghanian, Met. Mater. Int. 26, 882-890 (2020).
[10] C.C. Tasan, M. Diehl, D. Yan, M. Bechtold, F. Roters, L. Schemmann, C. Zheng, N. Peranio, D. Ponge, M. Koyama, K. Tsuzaki, D. Raabe, Annual Rev. Mater. Res. 45, 391-431 (2015).
[11] D. Das, P.P. Chattopadhyay, J. Mater. Sci. 44, 2957-2965 (2009).
[12] D.K. Mondal, R.M. Dey, Mater. Sci. Eng. A 149, 173-181 (1992).
[13] M . Sarwar, R. Priestner, J. Mater. Sci. 31, 2091-2095 (1996).
[14] B. Hwang, T. Cao, S.Y. Shin, S. Lee, S.J. Kim, Mater. Sci. Tech. 21, 967-975 (2005).
[15] F. Najafkhani, H. Mirzadeh, M. Zamani, Met. Mater. Int. 25, 1039-1046 (2019).
[16] J.I. Yoon, J. Jung, H.H. Lee, J.Y. Kim, H.S. Kim, Met. Mater. Int. 25, 1161-1169 (2019).
[17] H. Duan, Y. Li, G. He, J. Zhang, Int. J. Mod. Phys. B 23, 1191- 1196 (2009).
[18] S. Krajewski, J. Nowacki, Arch. Civ. Mech. Eng. 14, 278-286 (2014).
[19] N.S. Reddy, C.H. Park, Y.H. Lee, C.S. Lee, Mater. Sci. Tech. 24, 294-301 (2008).
[20] N.S. Reddy, Y.H. Lee, C.H. Park, C.S. Lee, Mater. Sci. Eng. A 492, 276-282 (2008).
[21] N.S. Reddy, B.B. Panigrahi, M.H. Choi, J.H. Kim, C.S. Lee, Comput. Mater. Sci. 107, 175-183 (2015).
[22] N.S. Reddy, J. Krishnaiah, S.G. Hong, J.S. Lee, Mater. Sci. Eng. A 508, 93-105 (2009).
[23] T. Dutta, S. Dey, S. Datta, D. Das, Comput. Mater. Sci. 157, 6-16 (2019).
[24] C. Lin, P.L. Nrayana, N.S. Reddy, S.W. Choi, J.T. Yeom, J.K Hong, C.H. Park, J. Mater. Sci. Tech. 35, 907-916 (2019).
[25] I .D. Jung, D.S. Shin, D. Kim, J. Lee, M.S. Lee, H.J. Son, N.S. Reddy, M. Kim, S.K. Moon, K.T. Kim, J. Yu, S. Kim, S.J. Park, H. Sung, Materialia 11, 100699 (2020).
[26] H.S. Lim, J.Y. Kim, B. Hwang, J. Korean. Soc. Heat Treat. 30, 106-112 (2017).
[27] S. Sodjit, V. Uthaisangsuk, Mater. Des. 41, 370-379 (2012).
[28] Z. Jiang, Z. Guan, J. Lian, Mater. Sci. Eng. A 190, 55-64 (1995).
[29] P . Chang, A.G. Preban, Acta Metall. 33, 897-903 (1985).
[30] N.D. Beynon, S. Oliver, T.B. Jones, G. Fourlaris, Mater. Sci. Tech, 21, 771-778 (2005).
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Authors and Affiliations

Seung-Hyeok Shin
1
ORCID: ORCID
Sang-Gyu Kim
1
ORCID: ORCID
Byoungchul Hwang
1
ORCID: ORCID

  1. Seoul National University of Science and Technology, Department of Materials Science and Engineering, Seoul, 01811, Republic of Korea
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Abstract

The most important challenges in the construction field is to do the experimentation of the designing at real time. It leads to the wastage of the materials and time consuming process. In this paper, an artificial neural network based model for the verification of sigma section characteristics like shear centre and deflection are designed and verified. The physical properties like weight, depth, flange, lip, outer web, thickness, and area to bring shear centre are used in the model. Similarly, weight, purlin centres with allowable loading of different values used in the model for deflection verification. The overall average error rate as 1.278 percent to the shear centre and 2.967 percent to the deflection are achieved by the model successfully. The proposed model will act as supportive tool to the steel roof constructors, engineers, and designers who are involved in construction as well as in the section fabricators industry.

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Authors and Affiliations

S. Janani
R. Thenmozhi
L.S. Jayagopal

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