Adhesive FPC antennas deliver Wi-Fi 6 / 6E / 7 performance

Adhesive flexible printed circuit (FPC) antennas for Wi-Fi 6, Wi-Fi 6E, and Wi-Fi 7 applications in the 2.4, 5.0 and 6.0GHz bands are available from Linx Technologies.

The FPC antennas provide a ground plane independent dipole internal / embedded antenna with a compact, low profile design. These are the latest FPC antennas from the company and add a range of options to meet the needs of different IoT, ISM (industrial, scientific and medical) and Wi-Fi applications. They are available in an assortment of size and configuration options, with various connector and cable length options.

“With the continued expansion of Wi-Fi 6 and 6E, and the introduction of the new Wi-Fi 7 standard, our customers will be better prepared to meet the growing demand for increased signal coverage and faster connections,” said Rick Stuby, Linx’s vice president of product management.

The flexible, adhesive backing means there are mounting options to secure the antennas in custom enclosures. They are also designed to be fitted into an environmentally-sealed enclosure for added protection.

The new Wi-Fi 6/6E/7 FPC antennas are available now via Linx Technologies’ distributor and manufacturer representative networks.

Linx manufactures wireless components including antennas, RF connectors and cables, RF modules, and remote controls. It is part of TE Connectivity which has a broad range of connectivity and sensor solutions, proven in the harshest environments, for transportation, industrial applications, medical technology, energy, data communications and the home.

http://www.linxtechnologies.com/

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Renesas and Fixstars develop tool suite for R-Car SoC-based ADAS

Semiconductor provider, Renesas Electronics and multi-core CPU / GPU / FPGA acceleration technology company, Fixstars are jointly developing a suite of tools that allows optimisation and fast simulation of software for autonomous driving (AD) systems and advanced driver assistance systems (ADAS) specifically designed for the R-Car SoCs from Renesas. 

Today’s AD and ADAS applications use deep learning to achieve highly accurate object recognition. Deep learning inference processing requires massive amounts of data calculations and memory capacity. The models and executable programs on automotive applications must be optimised for an automotive SoC, because real time processing with limited arithmetic units and memory resources can be a challenging task, explained Renesas. The process from software evaluation to verification must be accelerated and updates need to be applied repeatedly to improve the accuracy and performance. 

The tools will make it possible to rapidly develop network models with accurate object recognition from the initial stage of software development and take advantage of the performance of the R-Car SoC, said Renesas. The intention is to reduce post-development rework in order to shorten development cycles. 

The first tool is the R-Car Neural Architecture Search (NAS) tool for generating network models optimised for the SoC. This tool generates deep learning network models that efficiently use the CNN (convolutional neural network) accelerator, DSP, and memory on the R-Car. Engineers can develop lightweight network models that achieve highly accurate object recognition and fast processing time even without a deep knowledge or experience with the R-Car architecture, said Renesas.

Another tool is the R-Car DNN compiler for compiling network models for R-Car

It converts optimised network models into programs that can make full use of the performance potential of R-Car. It converts network models into programs that can run quickly on the CNN IP and also performs memory optimisation to enable high-speed, limited-capacity SRAM to maximise its performance.

Finally, there is the R-Car DNN simulator for fast simulation of compiled programs. It can be used to rapidly verify the operation of programs on a PC, rather than on the R-Car chip. Developers can generate the same operation results that would be produced by R-Car, said Renesas. If the recognition accuracy of inference processing is impacted during the process of making models more lightweight and optimising programs, engineers can provide immediate feedback to model development, therefore shortening development cycles.

“Renesas continues to create integrated development environments that enable customers to adopt the “software-first” approach,” said Hirofumi Kawaguchi, Vice President of the Automotive Software Development division at Renesas. “By supporting the development of deep learning models tailored to R-Car, we help our customers build AD and ADAS solutions, while also reducing the time to market and development costs.”

Genesis for R-Car is a cloud-based evaluation environment which allows engineers to evaluate and select devices earlier in the development cycles. Satoshi Miki, CEO of Fixstars, confirmed: “We will continue to develop new technologies to accelerate machine learning operations (MLOps) that can be used to maintain the latest versions of software in automotive applications.”

The partners also announced the joint Automotive SW Platform Lab, where Renesas and Fixstars will continue to develop software for deep learning and build operation environments that maintain and improve recognition accuracy and continuously updating network models.  

The first set of tools available today is designed for the R-Car V4H SoC.

https://www.renesas.com

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400GE network cybersecurity test is a first, says Keysight

Data centre network equipment manufacturers (NEM) and operators can use Keysight Technologies’ eight-port 400GE quad small form factor pluggable double density (QSFP-DD) network cybersecurity test platform to validate products and services support hyperscale data volumes, encryption demands and security challenges.

The APS-M8400 modular network cybersecurity test platform delivers 400GE density with an 8 x 400GE QSFP-DD test interface.

It has been introduced for data centre operators and service providers which are facing exponential growth in encrypted traffic volumes and security threats driven by increases in video streaming, cloud computing, AI, machine learning (ML) and IoT devices. The introduction of 400GE places critical infrastructure under even greater demand as growing volumes of encrypted traffic are being delivered at unprecedented speed, said Keysight. To meet these requirements, data centre NEMs and operators need tools that can validate that their products and services support hyperscale loads, without compromising security and usability.

The APS-M8400 delivers a modular, 400GE network security test platform that aggregates compute and FPGA resources to deliver hyperscale application and cybersecurity test and validation.

The ability to test 8 x 400GE QSFP-DD supports industry moves from 100GE to 400GE without the need for additional switches or infrastructure. It also offers a centralised management of up to 16 compute nodes to reduce the management learning curve and simplify system upgrades and maintenance.

It also offers flexible aggregation of compute and FPGA resources to optimise the performance and scalability requirements for any simulated workload, using one or multiple 400GE test interfaces.

The APS-M8400 can drive hyperscale application and cybersecurity test performance, including encrypted traffic loads, to effectively emulate the rigorous demands put upon data centre and service provider infrastructure. It can generate up to 3Tbit per second of Layer 4 to Layer 7 traffic, more than five billion concurrent connections, 2.4Tbits per second of transport layer security (TLS) traffic, and 2.4 million TLS connections per second.

It is designed to be scalable with a “pay-as-you-grow” structure, allowing users the flexibility to add capacity as requirements change and budgets allow.

http://www.keysight.com

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Matter portfolio from NXP includes secure tri-radio wireless MCU

Two microcontrollers (MCUs) added to NXP’s portfolio of end-to-end Matter solutions, the RW612 and the K32W148, combine edge processing capabilities with integrated security. The result, said NXP is to streamline development, simplify designs and reduce costs for Matter-enabled smart home devices.

The recently launched Matter standard aims to enable devices from different brands and ecosystems to seamlessly, reliably and securely communicate and thereby free consumers from ecosystem restraints. This allows consumers to select devices based on desired features rather than complex or confusing connectivity requirements. Both the multi-protocol supporting NXP K32W148 and the tri-radio RW612 have native support for Matter, make it easier for developers to integrate the functionality into smart home devices.

The RW612 is believed to be the industry’s first tri-radio wireless MCU with concurrent, multi-protocol support for Wi-Fi 6, Bluetooth Low Energy 5.3 and 802.15.4 and capable of supporting Thread or Zigbee. It is targeted for smart home devices such as thermostats, garage door openers, door locks, IP cameras, robotic vacuums, as well as smart appliances.

The K32W148 wireless MCU offers multi-protocol enablement across Thread, Bluetooth Low Energy 5.3, and Zigbee for devices such as smart plugs, smart lighting and low-power smart devices and sensors. It can add Thread and Zigbee support to home routers, hubs and bridges. Being multi-protocol, it reduces costs and simplifies antenna design with a single antenna.

The RW612 leverages an integrated tri-radio and advanced edge processing capabilities from the EdgeVerse i.MX RT crossover MCU family. It features an Arm Cortex-M33 MCU subsystem with TrustZone-M and fully integrated Wi-Fi 6, Bluetooth LE 5.3 and 802.15.4, capable of supporting Thread or Zigbee. It also includes on-chip SRAM and high performance configurable peripherals, including Ethernet, LCD controller and five FlexComm modules to support a variety of serial protocols. 

The level of integration reduces design complexity, bill of materials costs and end product size, added NXP. The RW612 is supported by the unified MCUXpresso development environment to reduce time to market.

NXP also offers the RW610, part of the same family of devices, which are ready to support new features such as Bluetooth LE Audio and Auracast broadcast audio for audio-focused applications, including portable audio devices and speakers, home theatre systems and gaming controllers.

The multi-protocol K32W148 wireless MCU has separated radio and security execution environments to free the main Arm Cortex-M33 core and memory for the customer’s application. The multi-protocol radio supports Matter, Thread, Bluetooth LE 5.3 and Zigbee. It also includes dual-PAN capability to simplify the co-existence of multiple IEEE 802.15.4 networks, such as Thread and Zigbee. 

It is also supported by the unified MCUXpresso development environment.

Both the K32W148 and the RW61x wireless MCUs are part of NXP’s EdgeLock Assurance program, which follows a secure-by-design approach, including protection against remote and local software attacks, as well as support for secure boot, secure debug and secure over-the-air firmware updates, with an immutable root-of-trust, hardware accelerated cryptography, and lifecycle management. 

The RW612, RW610 and K32W148 are currently sampling. 

http://www.nxp.com

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