40 research outputs found

    Evaluation of students’ understanding of Pauli's exclusion principle

    Get PDF
    AbstractThe purpose of this study was to collectively assess and ascertain knowledge about junior and senior year university student's understanding of the monumental Lindus Pauli's Exclusion Principle (PEP). Student's misconceptions were identified and addressed to acquire an better understanding of their misapprehensions. This study was based on the written answers given by our university students to a survey addressing Pauli's Exclusion Principle administered by our faculty. The diagnostic survey was applied to junior and senior year year university students, majoring in Chemistry and Physics. Some interesting results about PEP are presented and their critiques evaluated. An interesting feature of the data obtained was that there were no great difference between junior and senior year students knowledge and understanding of PEP

    Modelling of greenhouse climate parameters with artificial neural network and multivariate adaptive regression splines approach

    No full text
    In this study, it is aimed to model some greenhouse climate parameters by using two different prediction tools based on machine learning and artificial intelligence. For this purpose, in the first part of the study, the data set which consists of indoor and outdoor measurements taken from 7 different points of the greenhouse for 12 months from a region with terrestrial climate was adapted for modeling. In the second part, the functional relationship between input (independent) and output (dependent) variables was examined by artificial neural network (ANN) and multivariate adaptive regression splines (MARS) methods. In the third part, the models were evaluated with performance criteria and the best estimation model is selected. Comparison of ANN and MARS models indicated that MARS performs better than ANN with lesser values of MAPE (mean absolute percentage error), RMSE (root mean square error) and MAD (mean absolute deviation), and slightly higher value of R2 (coefficient of determination) in order to predict mean temperature (Tmcan, °C) and relative humidity (RHmcan, %). Based on these findings, it was observed that MARS method could provide a more detailed modeling as an alternative to ANN in developing comprehensive greenhouse climate mechanization. © 2019 Parlar Scientific Publications. All rights reserved
    corecore