scholarly journals INVESTIGATION OF THE FEASIBILITY OF CONSTRUCTING A MAP FOR COCONUT WITH SEVERAL F2 FAMILIES USING COMPUTER-SIMULATED DATA

CORD ◽  
2003 ◽  
Vol 19 (01) ◽  
pp. 34
Author(s):  
C. K. Bandaranayake

A computer simulation was performed using RiceSim computer software to explore the practicability of combining several different F2 populations together through JoinMap to mimic the real available coconut mapping populations, and found that it was very successful. JoinMap would be able to map all 16 chromosomes which  covered the map length of 1540 cM except for a single marker on chromosome 8. The largest marker interval was 32 cM at the bottom of chromosome 3 and all other markers were evenly distributed along the chromosomes maintaining the space around 12-30 cM between them.

The possibility of fabricating a digital voter that will detect and eliminate a faulty sensor in an array of identical biosensors is examined. Eleven statistical outlier-detection procedures are applied to the responses of an array of antimony-antimony oxide penicillinase electrodes and to an extensive computer simulation of small array responses. A Dixon excess-over-range test and a maximum normalized residual test are shown to be safe outlier-detection procedures that will detect a faulty sensor and offer an algorithm that may be economically implemented in hardware. The Iglewicz & Martinez test, which can be implemented more conveniently in software, is shown to be very efficient when applied to the real data. However, its poorer performance when applied to the simulated data suggests that further examination of this test is required.


Author(s):  
S.Yu. Trudnev ◽  

The most widely used single-phase asynchronous motors are described and also substitution and vector dia-grams are reviewed. Theoretical and mathematical descriptions of processes of controlling and enabling asynchronous modes of operation were provided, on the basis of which computer models of a single-phase asynchronous motor in static and dynamic modes was created in the Matlab program. Experiments were per-formed on the real and virtual models, and the data obtained were processed and compared to confirm the adequacy of the developed virtual model.


2020 ◽  
Vol 30 (1) ◽  
pp. 109-119
Author(s):  
Aleksandar Lebl ◽  
Dragan Mitic ◽  
Zarko Markov ◽  
Verica Vasiljevic

The output power of traffic channels in one cell of GSM like systems is estimated in this paper. We consider the real case: the number of users is much higher than the number of channels, the output power of one channel depends on the cube of the distance between a mobile user and the base station, and the distribution of users in the cell is uniform. We derive the expressions for cumulative distribution of output power of one channel and for the mean output power of the whole base station. Results of the calculation are confirmed by computer simulation.


2014 ◽  
Vol 606 ◽  
pp. 259-263
Author(s):  
Milad Hatami ◽  
Seyed Mojib Zahraee ◽  
Milad Ahmadi ◽  
Saeed Rahimpour Golroudbary ◽  
Jafri Mohd Rohani

With advent of high technologies, simulation software becomes more applicable between organizations’ managers. Simulation can model the real situation on a visual program. It will make the understanding of system, properly. Nowadays in each organization, the main considered factor is how they can improve its services confidently. This study emphasize on customer satisfaction and reducing the waiting time for customers in a bank service system. The goal of this paper is applying ARENA simulation software for modeling the system and measuring the performances. In addition, three strategies are implemented that each strategy consists of several scenarios. 17 possible scenarios are compared to achieve all kind of results that can be imagined. It would be very helpful for manager to analyzes and compare the results then find the lowest and highest effective element for improvement.


Paleobiology ◽  
1975 ◽  
Vol 1 (1) ◽  
pp. 63-70 ◽  
Author(s):  
Thomas J. M. Schopf ◽  
David M. Raup ◽  
Stephen Jay Gould ◽  
Daniel S. Simberloff

The degree of perceived taxonomic change in various lineages may be directly related to their general morphologic complexity: more complex forms appear to change more rapidly. “Rates of evolution” as customarily reported by paleontologists may therefore be a poor indication of evolutionary changes in the underlying genome. Two approaches were used to examine this problem. (1) We have estimated the degree of morphologic complexity by using the number of descriptive terms per genus, and per family, for 12 major groups of animals. Three general levels of complexity occur: (i) gastropods, bivalves and ectoprocts have relatively few terms; (ii) echinoids, foraminiferans, ostracodes, nautiloids, corals, trilobites, and brachiopods have an intermediate number of terms; (iii) mammals and ammonoids appear to have a relatively large number of terms. These 3 levels of complexity also increase in rate of taxonomic turnover; i.e., an increasing rate of evolution. (2) Using a cluster analysis based on morphologic similarity, we grouped 200 lineages of a computer-generated phylogenetic sequence according to 4 phenetic bases: 3, 5, 10 and 20 morphologic traits. Groups based on a few characters are longer lived and are commonly polyphyletic in comparison with groups based on many characters. In both the real world and the computer simulation, the bias of differential morphologic complexity may account for the observation that “only complicated animals evolve.” Most paleontologic studies of the “rate of evolution” may tell us more about morphologic complexity than about evolutionary rates of genomes.


2020 ◽  
Author(s):  
Gáspár Lukács ◽  
Eva Specker

Binary classification has numerous applications. For one, lie detection methods typically aim to classify each tested person either as “liar” or as “truthteller” based on the given test results. To infer practical implications, as well as to compare different methods, it is essential to assess the diagnostic efficiency, such as demonstrating the number of correctly classified persons. However, this is not always straightforward. In Concealed Information Tests (CITs), the key predictor value (probe-irrelevant difference) for “truthtellers” is always similar (zero on average), and “liars” are always distinguished by a larger value (i.e., a larger number resulting from the CIT test, as compared to the zero baseline). Thereby, in general, the larger predictor values a given CIT method obtains for “liars” on average, the better this method is assumed to be. This has indeed been assumed in countless studies, and therefore, when comparing the classification efficiencies of two different designs, the mean difference of “liar” predictor values in the two designs were simply compared to each other (hence not collecting “truthteller” data to spare resources). We show, based on the meta-data of 12 different experimental designs collected in response time-based CIT studies, that differences in dispersion (i.e., variance in the data, e.g. the extent of random deviations from the zero average in case of “truthtellers”) can substantially influence classification efficiency–to the point that, in extreme cases, one design may even be superior in classification despite having a larger mean “liar” predictor value. However, we also introduce a computer simulation procedure to estimate classification efficiency in the absence of “truthteller” data, and validate this procedure via a meta-analysis comparing outcomes based on empirical data versus simulated data.


Author(s):  
Beata Jakubiec

In the paper the use of process models and computer simulation as the tools which facilitates students to learn the conditions of the industrial processes control has been presented. Such approach enables to familiarise with operation and programming of controllers of industrial process. Moreover, it also enables safe testing of control algorithms provided by logic controllers through their implementation at the real industrial facility.


2021 ◽  
Author(s):  
Teppei Matsui ◽  
Trung Quang Pham ◽  
Koji Jimura ◽  
Junichi Chikazoe

AbstractThe non-stationarity of resting-state brain activity has received increasing attention in recent years. Functional connectivity (FC) analysis with short sliding windows and coactivation pattern (CAP) analysis are two widely used methods for assessing the non-stationary characteristics of brain activity observed with functional magnetic resonance imaging (fMRI). However, whether these techniques adequately capture non-stationarity needs to be verified. In this study, we found that the results of CAP analysis were similar for real fMRI data and simulated stationary data with matching covariance structures and spectral contents. We also found that, for both the real and simulated data, CAPs were clustered into spatially heterogeneous modules. Moreover, for each of the modules in the real data, a spatially similar module was found in the simulated data. The present results suggest that care needs to be taken when interpreting observations drawn from CAP analysis as it does not necessarily reflect non-stationarity or a mixture of states in resting brain activity.


Author(s):  
Dieni Indarti ◽  
Emmanuel O. Osigwe ◽  
Yi-Guang Li ◽  
Dody Widyantoro

Abstract Gas turbine components are susceptible to degradation during operations; hence, the identification of the engine condition is really important for the gas turbine users. To this end, a comprehensive adaptive diagnostic tool is an important step to monitoring the engine health condition and planning appropriate maintenance actions, thereby increasing the availability and reliability of the unit, and at the same time reducing the operation and maintenance expenses. In this paper, the capability of PYTHIA; a computer software technology for engine diagnostic purpose using a non-linear gas path analysis was explored on GE MS7001EA industrial heavy duty gas turbine during a plot period of 12,000 hours. The method used in this paper was to adapt an accurate engine performance model from the real engine historical data readings, and by implicating multiple component degradation parameters onto the diagnostic tool; which represents the possible phenomena in the real engine operation period. The adaptive gas path analysis was used to identify the level of degradation or health indices of the gas turbine at the module level and its degraded performance compared with the actual engine data trending. The results obtained indicated the capability of PYTHIA to successfully adapt real engine data and detect fault patterns in response to implanted faults of selected measurement set during engine operation period. The deviations between the predicted and measured values showed a satisfactory result with a root mean square error (RMS) ≤ 0.004 and Gas Path Analysis index value ≥ 0.996. The component parameter degradation during the 12000 hours engine operation was detected, indicating a decrease in flow capacity by 2.1% for compressor and turbine by 2.8%.


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