Posts

New Post

Markov Chains || Step-By-Step || ~xRay Pixy

Image
Learn Markov Chains step-by-step using real-life examples. Video Chapters: Markov Chains 00:00 Introduction 00:19 Topics Covered 01:49 Markov Chains Applications 02:04 Markov Property 03:18 Example 1 03:54 States, State Space, Transition Probabilities 06:17 Transition Matrix 08:17 Example 02 09:17 Example 03 10:26 Example 04 12:25 Example 05 14:16 Example 06 16:49 Example 07 18:11 Example 08 24:56 Conclusion

Hybrid Teaching Learning Based Optimization and Harmony Search | Hybrid TLBO-HS|

Image
Hybrid Teaching Learning Based Optimization and Harmony Search Hybrid TLBO-HS Video Chapters: Introduction: 00:00 Metaheuristics Hybridization: 00:40 Hybrid TLBO-HS: 02:43 Hybrid TLBO-HS Steps: 05:17 Conclusion: 11:30

Hybrid Grasshopper Optimization Algorithm with Genetic Algorithm

Image
Hybrid Grasshopper Optimization Algorithm and Genetic Algorithm GOA-GA Hybrid Metaheuristics Video Chapters: Introduction: 00:00 Hybrid Metaheuristics: 01:11 Metaheuristic Hybridization Types: 02:47 Hybrid Grasshopper Optimization Algorithm - Genetic Algorithm: 04:06 Hybrid Grasshopper and Genetic Algorithm Steps: 08:54 Conclusion: 13:00 Hybrid methods are powerful as compared to others. Suppose, we have 2 Algorithms: Algorithm A and Algorithm B . Now suppose we merge the merits of both algorithms and formed Hybrid A-B Algorithm. New Algorithm i.e., Hybrid A-B Algorithm is better as compared to Algorithm A or Algorithm B. Metaheuristics Hybridization Types: Metaheuristic with Metaheuristic. Metaheuristic with Exact Methods. Metaheuristic with Constraint Programming, Artificial Intelligence. Metaheuristic with Data Mining and Machine Learning Techniques. Hybrid Grasshopper Optimization Algorithm and Genetic Algorithm |Hybrid G.O.A - G.A.| Hybrid GOA-GA is a combination of 2 Meta-h...

Jellyfish Search Optimizer Step-by-Step Leaning with Example ~xRay Pixy

Image
Jellyfish Search Optimizer (2020) Video Chapters: Introduction: 00:00 Jellyfish Search Optimizer: 00:26 About Jellyfish: 01:11 Jellyfish Search Optimize Steps: 06:37 Time Control Calculation: 10:50 Passive Motion: 11:59 Action Motion: 12:52 Ocean Current: 15:27 Conclusion: 16:31 Jellyfish: Sea Animals Without Backbone. Jellyfish Size: 1-16 inch. Jellyfish Lifespan : 1 Month / 1 Year depend on species. Jellyfish Diet : Nutrients Plants, Planktons, Small Fishes, Fish eggs. Jellyfish Search Optimizer is also known as artificial Jellyfish Search Optimizer. Jellyfish Search Optimizer is inspired by jellyfish food searching behavior in the ocean. We can use Jellyfish Search Optimizer to solve Global Optimization problems, Complex real world optimization problems and other. Jellyfish movements are result due to: Ocean Current ( Horizontal Movement and Vertical Movemen t). Jellyfish Motion inside Swarm ( Passive Motion and Active Motion ). Time Control mechanism is used to switch jellyfish ...

Aquila Optimization Algorithm Step-by-Step Explanation ~xRay Pixy

Image
  Video Chapters: Introduction: 00:00 Aquila Optimizer: 00:31 Aquila Hunting Methods: 02:09 Aquila Optimizer Steps: 03:33 Aquila Optimizer Mathematical Models: 06:07 Conclusion: 13:00 Aquila Optimization Algorithm is inspired by the Aquila Behavior in the nature. This algorithm is basically inspired by the aquilas hunting methods. How they catch their prey in the real life? Aquila Hunting Methods: Method 01: High Soar with Vertical Stoop. [i.e., Expanded Exploration] Method 02: Contour Flight with Short Glide Attack. [i.e., Narrowed Exploration] Method 03: Low Flight with Slow Decent Attack. [i.e., Expanded Exploitation] Method 04: Walking and Grab the Prey. [i.e., Narrowed Exploitation] Aquila Optimization Algorithm Steps: Step 01: Initialize Algorithm Parameters and Population Randomly. Step 02: Check While (Current Iteration <= Maximum Iteration) Step 03: Evaluate Agents Performance using Fitness Function. Step 04: For all agents update Location mean value. Step 05: Update Le...

Cat and Mouse Optimization Algorithm

Image
 Cat and Mouse Optimization Algorithm (CMOA) Cat and Mouse Optimization Algorithm is a population based metaheuristic optimization algorithm. Cat and Mouse Optimization Algorithm mimic the natural behavior of Cat attack on the mouse and Mouse escape from the Cat. In this algorithm population is divided into 2 groups: Group of Cats and Group of Mice . Cat and Mice scan the whole search space in this algorithm with their random movements. Each member in the population is a solution to the given problem. Initial population is evaluated using objective function and based on their fitness values population is sorted. Best values in the population as calculated using objective function are considered as Population for Mice and worst values in the population are considered as Population for Cats . Position Update Procedure in Cat and Mouse Optimization Algorithm (CMOA): Position Update in CMOA is divided into 2 phases as given below: First, Move Cats Towards Mice. Second, Move Mic...

Harmony Search Algorithm Numerical Example | Step-By-Step |~xRay Pixy

Image
Harmony Search Algorithm Video Chapters: Introduction: 00:00 Harmony Search Algorithm: 01:00 Harmony Search Algorithm Example 1: 04:00 Harmony Search Algorithm Numerical Example 2: 07:26 Harmony Search Algorithm Numerical Example 3: 11:36 Conclusion: 15:00 How does harmony search algorithm work? Harmony Search Algorithm (HSA) is introduced by Zong Woo Geem and Joong Hoon Kim in 2001. Harmony Search is a music inspired optimization algorithm. Harmony Search Algorithm is basically inspired by the Music Harmony. Music Harmony refers to the relationship between sound waves coming either from musical instruments or human voices. It is the process by which individual sounds are joined together simultaneously. It is the combination of sound pitches in the music. Pitch is an aspect of sound that we can hear. Through pitch we can check weather sound is High or Low than other musical sound. Harmony Search Algorithm Main Rules: Musician has 3 choices Play Famous piece of Music (i.e., kn...

Krill Herd Optimization NUMERICAL EXAMPLE ~xRay Pixy

Image
 Krill Herd Optimization Algorithm Numerical Example KRILL HERD OPTIMIZATION ALGORITHM STEPS Initialize Algorithm Parameters. Initialize Population for Krill's. Evaluate Krill's Performance. Selection Best Krill Among all. Check While (Current Iteration <= Maximum Iteration) Calculate Neighbors Krill Effect. Movement Induced. Calculate Food Attraction. Calculate Best Position Attraction. Foraging Motion. Physical Diffusion. Crossover and Mutation Update Krill Position. End While Display Best Solution Movement Induced Calculation Foraging Motion Calculation Physical Diffusion Calculation What is Krill Herd Optimization Algorithm?  Krill herd optimization algorithm is introduced in 2012 to solve the Global Optimization Function. This is a population-based Swarm Intelligence Search Algorithm based on the Herding behavior of krill.   In the Krill herd optimization algorithm, we have a  Group of Krill individuals and they are  Se...

Draw Geometric Optical Illusion Art 3D | ILLUSION ART 1 | ~xRay Pixy

Image
Easy 3D Illusion Art

Learn How to Solve Sudoku Puzzle? ~xRay Pixy

Image

Optimization Engineering - Design Optimization

Image
 [ CAN Design Optimization using Teaching Learning Based Optimization Algorithm] PROBLEM STATEMENT:  Design a Can to Hold 800ml Liquid. OBJECTIVE: Minimize the CAN Manufacturing Cost, Minimize Amount of Sheet Metal Required.  CONSTRAINTS: For Diameter, It should be no greater than 16 cm and no less than 4.0 cm, For Height, It should be no more than 36 cm and no less than 16 cm.                                                     4.0 <= Diameter <= 16; cm                                                     16<= Height <= 36; cm Constraints to HOLD 800ml Liquid Capacity. OBJECTIVE FUNCTION: COST Function Used to Solve this problem: RESULT: AFTER OPTIMIZATION USING TEACHING LEARNING BASED OPTIMIZATION ALGO...

Shark Smell Optimization Algorithm Numerical Example

Image
SHARK SMELL OPTIMIXATION ALGORITHM [ Numerical Example ] Shark Smell Optimization Algorithm is population based Metaheuristic optimization algorithm. Shark Smell Optimization Algorithm is inspired by the Shark food foraging behavior.   Shark Smell Optimization Algorithm Steps: Initialize Algorithm Parameters Initialize Population for N Sharks in the search space. Evaluate Performance. While (current Iteration < Maximum Iteration) Calculate Shark Velocity Calculate Shark Position based on forward movement. Calculate Shark Position based on rotational movement. Identify Shark next position based on forward and rotational movements. Evaluate Performance. End While Display Best Solution. STEP 01: Initial Important Parameters.          Current_Iteration =1;          Maximum_Iteration = 10;          and other. STEP 02: Initial Population Randomly. Suppose, Population Size = 2; Position(1) = -0.9891 Positi...

Teaching Learning Based Optimization Algorithm | TLBO Numerical Example|

Image
Teaching Learning Based Optimization Algorithm  | TLBO Numerical Example | Learn Teaching Learning Based Optimization Algorithm Step-by-Step with Numerical Example. Teaching Learning Based Optimization Algorithm is based on the effect of Teacher on the Learners in the class. Teaching Learning Based Optimization Algorithm is basically inspired by the behavior of learners in the classroom. In Teaching Learning Based Optimization Algorithm 2 main procedure are followed: Teaching Phase: Learners study from the Teacher. Learner Phase: Learners can interact with each other and they can randomly interact with each other. Teaching Learning Based Optimization Algorithm Steps: Population Initialization Phase. Agents Performance Evaluation using Cost Function. Select Best Solution Among all. Calculate Mean Value. Teacher Phase. Mathematical Model Learner Phase MathematicalModel Evaluate New Solutions. Update Current Best Solution. Check Stopping Criteria. Display Best Solution.

Bacterial Foraging Optimization Algorithm | NUMERICAL EXAMPLE | ~xRay Pixy

Image
Bacterial Foraging Optimization Algorithm   |PART 2 - NUMERICAL EXAMPLE | _______________________________________________________________________________ [ PART 1 ] Learn Bacterial Foraging Optimization Algorithm (BFOA) Step-by-Step Learning ~xRay Pixy https://youtu.be/LXInp4wvpXM

Laptops, Desktops, Printers and Computers Accessories

Image
[LAPTOP, DESKTOP, COMPUTER ACCESSORIES ] -------------------------------------------------------------------------------------------------------------------- CLICK HERE TO  SHOP NOW --------------------------------------------------------------------------------- [ LAPTOP / HD MONITOR ] Lenovo IdeaPad 3 Core i3 10th Gen - (8 GB/256 GB SSD/Windows 10 Home) 15IML05 Thin and Light Laptop (15.6 Inch, Platinum Grey, 1.7 kg, with MS Office) 81WB01BNIN Click Here to  BUY NOW Lenovo 18.5-inch HD Monitor, TN Panel, (5ms Response time - 200 Nits Brightness – HDMI and VGA Port - HDMI Cable Included - 72% Color Gamut - TUV Blue Light Certification), LED Backlit                                       Click Here to  BUY NOW [ MOUSE ( Wireless, Wired, Optical) ] Zebronics Zeb-Jaguar Wireless Mouse, 2.4GHz with USB Nano Receiver, High Precision Optical Tracking, 4 Buttons, Plug & Play, Ambid...
More posts