CURRICULAR SYNCOPATIONSUsing the hill-climbing algorithm with curricula and courses

ACM Inroads ◽  
2016 ◽  
Vol 7 (2) ◽  
pp. 36-38
Author(s):  
Henry M. Walker
2012 ◽  
Vol 253-255 ◽  
pp. 1869-1875
Author(s):  
Sheng Zhang ◽  
Wu Sheng Liu

The optimization model is framed with a goal to minimize overall consumption of travel time for passengers. A variety of constrains are considered, including time, capacity, stop number, profit and so on. According to the features of the model, the hill-climbing algorithm is adopted to obtain the initial solution, which reduces the time of optimization. Meanwhile, direct order encoding method, namely node method, is introduced for encoding, construct a Hybrid Genetic Algorithm for the solution. The results show that adapter value is more steady and the model result is preferable when the variation rate is increased while the number of iteration is decreased.


Electronics ◽  
2021 ◽  
Vol 10 (9) ◽  
pp. 1101
Author(s):  
Dan Stefanoiu ◽  
Janetta Culita

In the modern optimization context, this paper introduces an optimal PID-based control strategy for a two-tank installation, namely ASTANK2. The process model was identified by using raw and spline smoothed measured data, respectively. Two PID controller configurations, a standard (regular) one (PID-R) and a non-standard one (PID-N), were considered for each type of model, resulting in four regulators. The optimal tuning parameters of each regulator were obtained by a searching approach relying on a combination of two metaheuristics. Firstly, an improved version of the Hill Climbing algorithm was employed to comprehensively explore the searching space, aiming to find fairly accurate tuning parameters. Secondly, an improved version of the Firefly Algorithm was proposed to intensively refine the search around the previously found optimal parameters. A comparative analysis between the four controllers was achieved in terms of performance and robustness. The simulation results showed that all optimal controllers yielded good performance in the presence of exogenous stochastic noise (bounded error tracking, setpoint tracking, reduced overshoot, short settling time). Robustness analysis is extensive and illustrates that the PID-R controllers are more robust to model uncertainties, whilst PID-N controllers are more robust to tracking staircase type references.


Robotica ◽  
2011 ◽  
Vol 30 (2) ◽  
pp. 257-278 ◽  
Author(s):  
Tuong Quan Vo ◽  
Hyoung Seok Kim ◽  
Byung Ryong Lee

SUMMARYThis paper presents a model of a three-joint (four links) carangiform fish robot. The smooth gait or smooth motion of a fish robot is optimized by using a combination of the Genetic Algorithm (GA) and the Hill Climbing Algorithm (HCA) with respect to its dynamic system. Genetic algorithm is used to create an initial set of optimal parameters for the two input torque functions of the system. This set is then optimized by using HCA to ensure that the final set of optimal parameters is a “near” global optimization result. Finally, the simulation results are presented in order to demonstrate that the proposed method is effective.


2018 ◽  
Vol 47 (9) ◽  
pp. 913001
Author(s):  
杜书剑 DU Shu-jian ◽  
章羚璇 ZHANG Ling-xuan ◽  
王国玺 WANG Guo-xi ◽  
李中宇 LI Zhong-yu ◽  
张其浩 ZHANG Qi-hao ◽  
...  

SPE Journal ◽  
2013 ◽  
Vol 18 (03) ◽  
pp. 563-574 ◽  
Author(s):  
Oscar Vazquez ◽  
David Corne ◽  
Eric James Mackay ◽  
Myles Martin Jordan

Summary Oilfield scale formation represents a significant flow-assurance challenge to the oil and gas industry, because of increasing water production worldwide and higher oil prices. Scale-inhibitor (SI) squeeze treatment is the most widespread method to combat downhole scaling. To predict SI squeeze treatments accurately for further optimization, it is necessary to simulate the SI retention in the formation, which may be described by a pseudoadsorption isotherm. Although these are often derived from coreflood experiments, sometimes they are not appropriate for modeling well treatments because the core tests on which they are based cannot fully represent field-scale processes. In practice, the parameters of an analytic form of the isotherm equation are modified by trial and error by an experienced practitioner until a match is obtained between the prediction and the return profile of the first treatment in the field. The main purpose of this paper is to present a stochastic hill-climbing algorithm for automatic isotherm derivation. The performance of the algorithm was evaluated by use of data from three field cases. Two success criteria were defined: the ability to match a single historical treatment and the ability to predict subsequent successive treatments. To test for the second criterion, a candidate isotherm was derived from the first treatment in a well that was treated with the same chemical package on consecutive occasions, and then the predictions by use of the suggested solution were compared with the observed SI concentration-return profiles from the subsequent treatments. In all the calculations, the performances of both the isotherms suggested by the hill-climbing algorithm and the isotherms derived by trial and error were compared. The results demonstrate that the hill-climbing algorithm is an effective technique for deriving an isotherm for a single treatment, although predictions for successive treatments worsened slightly with each treatment.


2018 ◽  
Author(s):  
J. Jaime Puldón ◽  
A. Cifuentes Castro ◽  
K. Martínez ◽  
E. Marín Moares ◽  
J. Hernandez-Wong ◽  
...  

Author(s):  
Eka Surya Aditya ◽  
Wikan Danar Sunindyo

Communities in big cities often encounter problems in using public transportation due to difficulties in accessing available information. The information is not well integrated and scattered in various places. For this reason, an information and recommendation system is needed to facilitate the public in choosing the right mode of land transportation. The recommendation system can be built using the Hill Climbing algorithm. In this paper, I explain the development of a public land transportation recommendation system using three types of Hill Climbing Algorithms. The results of the recommendations are analyzed based on the complexity of asymptotic time, space complexity, and the quality of the results.


2018 ◽  
Vol 3 (2) ◽  
pp. 36
Author(s):  
Hairul Anam ◽  
Feby Sabilhul Hanafi ◽  
Ahmad Fauzal Adifia ◽  
Ahmad Firdaus Ababil ◽  
Saiful Bukhori

Puzzle is one example of the application of artificial intelligence, in the process of completion there are many search algorithms that can be applied. The 8 puzzle solution will be faster obtained if the array principle is used with a variation of the Steepest-Ascent Hill Climbing (Hill Climbing algorithm by choosing the sharpest / steepest slope) with the correct heuristic parameters and distance heuristics and combined with LogList as the storage state ever passed to overcome the problems in the hill climbing algorithm itself and avoid the looping state that has been passed. Steepest Ascent Hill Climbing is an algorithm method that is widely used for optimization problems. The application of the SAHC (Steepest Ascent Hill Climbing) Algorithm to the puzzle is needed so that the game is completed with optimal time.


2014 ◽  
Vol 1039 ◽  
pp. 266-273
Author(s):  
Xu Zhang ◽  
Chen Li

In this paper, the light field is modeled from four fundamental factors and the spatial multiplexing of light field is analyzed. The relationship between the light field and the pixel in raw image is described for one typical light field camera. Then, the light field data is adopted in refocus and all-focus imaging. In the aspect of refocus, the hill-climbing algorithm is designed to found the highest value of the image clarity, which is evaluated with the second order gradient square function. On all-focus, the divide and conquer algorithm is adopted to find the optimal path in a gird. The experiment results confirm that the light field model is valid. The proposed refocus method is robust in comparisons with other four clarity measures. Our all-focus method can greatly eliminate the block artifact.


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