WiFi network selection is typically based on the received signal strength of an access point (AP). However, the strongest signal does not necessarily lead to good user experience. For example, a strong signal or SSID may simultaneously attract many WiFi clients, causing congestion. This disclosure utilizes machine learning models trained to intelligently select a wireless access point or an SSID based on multiple factors, e.g., neighboring APs, neighboring clients, historical service information, signal and interference levels, ping jitter, time-of-day, day-of-week, etc. Per the techniques, the selected AP is associated with a best overall score as determined by the machine learning model based on several factors. The selected AP therefore ...
Covering a wide area by a large number of WiFi networks is anticipated to become very popular with I...
The current commercial access point (AP) selection schemes are mostly based on received signal stren...
Introducing cognitive mechanisms at the application layer may lead to the possibility of an automati...
When a Wi-Fi device tries to connect to access points, it picks a channel, rate, and a particular ac...
Generally, the present disclosure is directed to selecting a best network access point when multiple...
Abstract: This paper focuses on addressing the Access Point (AP) selection problem by relying on a...
Wi-Fi® 8 envisions machine learning (ML) -based techniques (among others) to provide better predicta...
Techniques are described herein for improving wireless determinism by enhancing the Access Point (AP...
The performance experienced by wireless clients in IEEE 802.11 wireless networks heavily depends on ...
This paper addresses the problem of Access Point (AP) selection in large Wi-Fi networks. Unlike curr...
Two proposed cognitive selection mechanisms were applied in user terminal to observe the performanc...
Abstract The low price of commodity wireless LAN cards and access points (APs) has resulted in the r...
Device mobility in dense Wi-Fi networks offers several challenges. Two well-known problems related t...
Techniques are described herein for optimizing access point transmissions. According to these techn...
In the near future, wireless local area networks (WLANs) will overlap to provide continuous coverage...
Covering a wide area by a large number of WiFi networks is anticipated to become very popular with I...
The current commercial access point (AP) selection schemes are mostly based on received signal stren...
Introducing cognitive mechanisms at the application layer may lead to the possibility of an automati...
When a Wi-Fi device tries to connect to access points, it picks a channel, rate, and a particular ac...
Generally, the present disclosure is directed to selecting a best network access point when multiple...
Abstract: This paper focuses on addressing the Access Point (AP) selection problem by relying on a...
Wi-Fi® 8 envisions machine learning (ML) -based techniques (among others) to provide better predicta...
Techniques are described herein for improving wireless determinism by enhancing the Access Point (AP...
The performance experienced by wireless clients in IEEE 802.11 wireless networks heavily depends on ...
This paper addresses the problem of Access Point (AP) selection in large Wi-Fi networks. Unlike curr...
Two proposed cognitive selection mechanisms were applied in user terminal to observe the performanc...
Abstract The low price of commodity wireless LAN cards and access points (APs) has resulted in the r...
Device mobility in dense Wi-Fi networks offers several challenges. Two well-known problems related t...
Techniques are described herein for optimizing access point transmissions. According to these techn...
In the near future, wireless local area networks (WLANs) will overlap to provide continuous coverage...
Covering a wide area by a large number of WiFi networks is anticipated to become very popular with I...
The current commercial access point (AP) selection schemes are mostly based on received signal stren...
Introducing cognitive mechanisms at the application layer may lead to the possibility of an automati...