Indoor Positioning using KNN Algorithm implementation on Omnetpp/Castalia ASAP

Implement KNN algorithm on Castalia/Omnetpp.

The implementation should be with comments.

The RSSI values from RFID tags are used with triangulation to get the coordinates. The RSSI values can be obtained from path loss model using C++ code, then inserted to Omnetpp/Castalia. The learning data can also be obtained outside the simulation software.

The network should use WSN protocols, and parameters when necessary.

The results should be of

[url removed, login to view] normal algorithm, using triangulation only

[url removed, login to view] using KNN algorithm

Skills: Algorithm, C++ Programming, Machine Learning, Matlab and Mathematica, Wireless

See more: podem algorithm implementation, decrypt using blowfish algorithm, implementation testing neural network learning algorithm matlab, podem algorithm implementation programming language, weighted round robin algorithm implementation, mimo detection list decoding technique using chase algorithm, implement algorithm trading system project involve, distance vector routing algorithm implementation, blowfish algorithm implementation, apriori algorithm implementation code, algorithm implementation python, algorithm implementation projects, slot machine algorithm implementation java, sample save problem using pseudcoding algorithm, apriori algorithm implementation, apriori algorithm implementation visual basic, algorithm implementation matlab, distance vector algorithm implementation

About the Employer:
( 0 reviews ) Tanzania, United Republic of

Project ID: #16542689

2 freelancers are bidding on average $18 for this job


Dear Sir ! I have 3 year experience which you are required the job. Please respond discuss it and start work on it Thanks

$25 USD in 1 day
(4 Reviews)

I have high proficiency in Matlab including SPSS Statistics, Simulation, Mathematics, Python,Algorithm, C programming, Machine learning and Statistics analysis. Once you share the project, I will have a look & confirm More

$10 USD in 1 day
(3 Reviews)