Predictive Estimation of Wireless Link Performance from Medium Physical Parameters Using Support Vector Regression and k-Nearest Neighbors
نویسندگان
چکیده
In wireless networks, the physical medium is the cause of most of the errors and performance drops. Thus, an efficient predictive estimation of wireless networks performance w.r.t. medium status by the communication peers would be a leap ahead in the improvement of wireless communication. For that purpose, we designed a measurement bench that allows us to accurately control the noise level on an unidirectional WIFI communication link in the protected environment of an anechoic room. This way, we generated different medium conditions and collected several measurements for various PHY layer parameters on that link. Using the collected data we analyzed the ability to predictively estimate the throughput performance of a noisy wireless link from measured physical medium parameters, using SVR (Support Vector Regression). Finally, we ranked the pertinence of the most common physical parameters for estimating or predicting the throughput that can be expected by users on top of the IP layer over a WIFI link.
منابع مشابه
A comparative study of performance of K-nearest neighbors and support vector machines for classification of groundwater
The aim of this work is to examine the feasibilities of the support vector machines (SVMs) and K-nearest neighbor (K-NN) classifier methods for the classification of an aquifer in the Khuzestan Province, Iran. For this purpose, 17 groundwater quality variables including EC, TDS, turbidity, pH, total hardness, Ca, Mg, total alkalinity, sulfate, nitrate, nitrite, fluoride, phosphate, Fe, Mn, Cu, ...
متن کاملLocally Weighted Polynomial Estimation of Spatial Precipitation
We demonstrate the utility of locally weighted polynomial regression, a nonparametric technique for surface estimation discussed in Lall et al. (1995), for the spatial estimation of precipitation surface, with data related to the Chernobyl nuclear power plant accident. The method uses multivariate, locally weighted polynomial regression with temperature or precipitation as the dependent variabl...
متن کاملComparing performance of k-Nearest Neighbors, Parzen Windows and SVM Machine Learning Classifiers on QSAR Biodegradation Data across Multiple Dimensions
Machine learning and pattern recognition are the most popular artificial intelligence techniques to model systems, those can learn from data. These techniques efficiently help in Classification, Regression, Clustering and Anomaly detection etc. k-Nearest Neighbors, Parzen Windows and Support Vector Machine (SVM) are some of the widely used Machine Learning classification techniques. This projec...
متن کاملSupervised Learning for Link Adaptation in Multi-antenna Wireless Links
In this paper, we apply supervised learning algorithms for link adaptation in wireless communications where nodes possess multiple antennas. Link adaptation maximizes throughput while maintaining target reliability by adaptively selecting the modulation order and coding rate. Due to physical channel impairments, hardware non–linearities, and non–Gaussian noise effects, it is often difficult to ...
متن کاملModelling Climatic Parameters Affecting the Annual Yield of Rheum Ribes Rangeland Species using Data Mining Algorithms
Identification of climatic characteristics affecting the annual yield of Rheum Ribes can be useful in management and development of this species in the rangelands. In this research, the annual yield of this species in Khorasan-Razavi province based on 74 climatic parameters during a ten-year period evaluated and affecting climatic parameters extracted using data mining methods. First, the role ...
متن کامل