欧美色爱综合网_国产一区二区三区18|HD中文字幕在线播放,推女郎写真裸体影院,美女露出让男生揉的,一受多攻h巨肉寝室

<ul id="yigss"></ul>
  • <input id="yigss"></input>
    • <fieldset id="yigss"><samp id="yigss"></samp></fieldset>
      • <ul id="yigss"></ul>
        <menu id="yigss"></menu>
            Silicon Labs
            • ⟵ Back
              Products
              Tech Talks 2025 Webinar Series: Empowering IoT Innovation
              WirelessWireless
              Amazon Sidewalk
              Bluetooth
              Matter
              Multiprotocol
              Proprietary
              Thread
              Wi-Fi
              Wi-SUN
              Z-Wave
              Zigbee
              TechnologyTechnology
              Channel Sounding
              Energy Harvesting
              LPWAN
              Machine Learning
              Security
              Non-WirelessNon-Wireless
              MCUs
              Sensors
              USB Bridges
              Power Management
              ServicesServices
              Custom Part Manufacturing
              Developer Services
              SDK Extended Maintenance Service
            • ⟵ Back
              Applications
              Smart HomeSmart Home
              Appliances
              Entertainment Devices
              IoT Gateways
              LED Lighting
              Security Cameras
              Sensors
              Smart Locks
              Switches
              Industrial IoTIndustrial IoT
              Access Control
              Asset Tracking
              Battery-Powered Tools
              Circuit Breakers
              Commercial Lighting
              Electric Submetering
              Factory Automation
              Human Machine Interface
              Industrial Wearables
              Predictive Maintenance
              Process Automation
              Smart HVAC
              Smart CitiesSmart Cities
              Battery Storage
              EV Charging Stations
              Smart Agriculture
              Smart Buildings
              Smart Metering
              Smart Solar PV System
              Street Lighting
              Smart RetailSmart Retail
              Commercial Lighting
              Direction Finding
              Electronic Shelf Labels
              Loss Prevention
              Wi-Fi Access Points
              Connected HealthConnected Health
              Portable Medical Devices
              Smart Hospitals
              Smart Wearable Devices
            • ⟵ Back
              Ecosystems
              Tech Talks 2025 Webinar Series: Empowering IoT Innovation
              Ecosystem PartnersEcosystem Partners
              AI/ML Developer Journey
              Amazon Sidewalk
              Bluetooth Developer Journey
              Bluetooth Mesh Developer Journey
              Google Home
              Matter Developer Journey
              Wi-Fi Developer Journey
            • ⟵ Back
              Resources
              Simplicity Studio 5
              Fast track IoT development
              Developer ToolsDeveloper Tools
              Software Documentation
              Release Notes
              GitHub
              Technical Resource Library
              Simplicity Studio
              Mobile Apps
              Software Development Kits
              Hardware Development Kits
              Gateways
              RTOS
              Content and TrainingContent and Training
              Tech Talks 2025 Webinar Series
              Works With 2024 On-Demand
              IoT for Good Developer Stories
              Blog
              Case Studies
              Whitepapers
              Training Library
              Webinars
              SupportSupport
              Community
              Partner Network
              Channel & Distribution
              Quality and Packaging
              How to Buy
              Submit a Ticket
              Report a Security Issue
            • ⟵ Back
              Company
              Tech Talks 2025 Webinar Series: Empowering IoT Innovation
              CompanyCompany
              Careers
              Environmental, Social & Governance
              Community Commitment
              Diversity, Equity and Inclusion
              Environmental Sustainability
              Quality
              Management Team
              Supply Chain Responsibility
              News & EventsNews & Events
              Blog
              News Room
              Events
              Investor RelationsInvestor Relations
              Annual Report & Proxies
              Board of Directors
              Quarterly Results
              SEC Filings
              OfficesOffices
              Hyderabad
              Other Global Offices
              Contact Us
            English
            • English
            • 簡體中文
            • 日本語
            Ask AI
            AskAI
            Ask AI
            //
            Whitepapers // Bluetooth Angle Estimation for Locationing

            Bluetooth Angle Estimation for Real-Time Locationing

            Whitepaper

            Bluetooth Angle Estimation for Real-Time Locationing

            Sauli Lehtim?ki, Senior Software Engineer, Silicon Labs

            ?

            Bluetooth Angle of Arrival (AoA) and Angle of Departure (AoD) are new technologies that establish a standardized framework for indoor locationing. With these technologies, the fundamental problem of locationing comes down to solving the arrival and departure angles of radio frequency signals. In this paper, we explain the basics of these technologies and give some theory for estimating direction of arrival.

            Introduction

            Bluetooth Angle of Arrival (AoA) and Angle of Departure (AoD) are new technologies that establish a standardized framework for indoor locationing. With these technologies, the fundamental problem of locationing comes down to solving the arrival and departure angles of radio frequency signals. This paper explains the basics of these technologies and provides theory for estimating direction of arrival.?

            Locationing technologies have many useful applications, one example being GPS, which is widely used all over the world. Unfortunately, GPS does not work very well indoors, so there is a real need for better indoor positioning technologies. The goal is to track the locations (or angles) of individual objects with an external tracking system, or for a device to track its own location in an indoor environment. This kind of locationing system can be used to track assets in a warehouse or people in a shopping mall, or people can use locationing for their own wayfinding.
            ?

            Bluetooth Angle of Arrival (AoA) and Angle of Departure (AoD)

            Let's consider a device with a multiple antenna linear array for a receiver and a device with one antenna for a transmitter. Also, assume that the radio wave travels as a planar wave front rather than spherically, which can be safely assumed when looking from a distance. If the transmitter, which is sending a sine wave through the air, lies on the normal line perpendicular to the array line, every antenna (channel) of the array will see the incoming signal in the same phase. If the transmitter does not lie on the normal line, the receiving antennas will see phase differences between the channels. The phase difference information can be used to calculate the angle of arrival.

            In practice, the receiver will need to have multiple ADC channels or use an RF switch to take samples from each individual channel. The samples are called “IQ-samples” since a sample pair of “In-phase” and “Quadrature-phase” readings are taken from the same input signal. These samples have a 90 degree phase difference in the sampling. When this pair is considered to be a complex value, each complex value contains both phase and amplitude information and can be an input for the arrival angle estimation algorithm.

            Radio waves travel at the speed of light, which is 300,000km/s. When using frequencies around 2.4 GHz, the corresponding wavelengths are about 0.125 m. The maximum distance between two adjacent antennas for most estimation algorithms is a half wavelength. Many algorithms require this, otherwise we get effects similar to aliasing. There is no theoretical minimum distance limitation, but in practice, the minimum size is limited by the mechanical dimensions of the array plus, for example, mutual coupling between the antenna elements.



            The maximum distance between two adjacent antennas for most estimation algorithms is a half wavelength.



            For Angle of Departure (AoD), the fundamental idea of measuring phase differences is the same, but device roles are swapped. In AoD, the device being tracked uses only one antenna, while the transmitter devices use multiple antennas. The transmitter device sequentially switches the transmitting antenna, and the receiving side knows the antenna array configuration and switching sequence.

            When considering this from an application point of view, you can see a clear difference between these two techniques. In AoD, the receiving device is able to calculate its own position in space using angles from multiple beacons and their positions (by triangulation). In AoA, the receiving device tracks arrival angles for individual objects. Still, it is good to note that different combinations of these can be performed. As a result, these techniques do not limit what can be done at the application level. Both in Bluetooth AoA and AoD, the related control data is sent over a traditional data channel. Typically, these techniques can achieve a couple of degrees angular accuracy and around 0.5 m locationing accuracy, but these figures are highly dependent on the implementation of the locationing system.


            Challenges

            One of the biggest and perhaps most obvious challenges in this subject is answering the question: “How are angle estimates calculated based on the sample data?” It is not enough to calculate angle estimates in an ideal environment. You must also calculate them in environments with very heavy multi-path where signals are highly correlated or coherent. Coherent signal is delayed, scaled version of some other signal, which can be the case when radio waves are reflected from walls, for example. Other challenges include signal polarization. In most cases, you cannot control the polarization of the mobile device, so the system has to take this into account. Also, signal noise, clock jitter, and signal propagation delays add their own variables to the problem. Depending on the system scale, the RAM and especially CPU requirements can be demanding for an embedded system. Many of the well performing angle estimation algorithms require a significant amount of processing power from the CPU.


            Angle of Arrival Theory

            Angle estimation methods and antenna arrays are essential for the locationing system to work properly. The history of direction finding theory goes back more than 100 years when the first attempts to solve this problem were made using directional antennas and, obviously, purely analog systems. In the years following, test methods moved to the digital world, but the basic principles are still quite similar. These direction-finding methods are already used in many applications, such as medical equipment, security, and military devices. This section discusses the basics of typical antenna arrays and estimation algorithms. Direction finding in this white paper is defined as the general problem of estimating arrival and departure angles.


            Antenna Arrays

            Antenna arrays for direction finding are usually divided into categories. The most common ones discussed here are Uniform Linear Array (ULA), Uniform Rectangular Array (URA), and Uniform Circular Array (UCA). The linear array is a one-dimensional array, meaning that all antennas in the array lie on a single line, whereas the rectangular and circular arrays are two-dimensional arrays, meaning that the antennas are spread in two dimensions (on a plane). By using a one-dimensional antenna array, you can reliably measure only the azimuth angle, assuming the tracked device moves consistently on the same plane. Furthermore, with two-dimensional arrays, you can reliably measure both azimuth and elevation angles in the 3D half-space. If the array is extended to a full 3D array (antennas spread on all three Cartesian coordinates), then you will can measure the full 3D space. Designing an antenna array for direction finding is not a straightforward task. When antennas are placed in an array, they start affecting each other’s responses, which is called mutual coupling. You also have to keep in mind that, in most cases, you cannot control the polarization of the transmitting end, which creates an additional challenge for the designer. In IoT applications, the devices are often expected to be small and even work in very high frequency bands. Estimation algorithms often require certain properties from the array. For example, the estimation algorithm called ESPRIT works on the mathematical assumption that the array is divided into two identical subarrays [3].


            Angle Estimation Algorithms

            Let's look at the mathematical/algorithmic problem of estimating the angle of arrival based on the input IQ-data. The problem definition itself is simple, estimate the arrival angle of an emitted (narrowband) signal arriving at the receiving array. While the problem statement sounds trivial, a robust solution (that works in real life) for this problem is not easy and can require much processing power from the hardware. Next, this white paper will describe two different approaches for solving this problem. The first one is basic and called a classical beamformer. The second is a more advanced technique called Multiple Signal Classification (MUSIC). This white paper does not discuss proofs of any theorems or reasons why these methods work, but rather gives a high-level view of how the algorithms work. Deeper studies about these estimation algorithms can be found from [1] and [2].


            Classical Beamformer

            Let's begin with a mathematical model of a uniform linear array. You are given a data vector of IQ-samples for each antenna. Let this vector be called x. Now, a phase shift is seen by each antenna (which can be 0) plus some noise, ??, in the measurements, so ?? can be written as a function of time ??:

            where ?? is the signal sent over the air, and ?? is the steering vector of the antenna array:

            where ?? is the distance between adjacent antennas, ?? is the wavelength of the signal, ?? is the number of elements inthe antenna array, and ?? stands for the angle of arrival. Steering vector (2) describes how signals on each antenna are phase shifted because of the varying distances to the transmitter. By using (1), you can calculate an approximation of the so-called sample covariance matrix, ??xx , by calculating

            where H stands for the Hermitian transpose of a matrix.

            The sample covariance matrix (3) will be used as an input for the estimator algorithm, as you will see.

            The idea of the classical beamformer is to maximize the output power as a function of the angle, similar to how a mechanical radar works. If you attempt to maximize the power, you end up with the next formula:

            Now, to find the arrival angle, you need to loop through the arrival angle????and find the peak maximum power,???. The angle, or theta, producing the maximum power corresponds to the angle of arrival. While this approach is quite simple, its accuracy is not generally very good. Therefore, let's introduce another method, which is a bit better in terms of accuracy. See, for example, [4] for an algorithm accuracy comparison.


            MUSIC (Multiple Signal Classification)

            One type of estimation algorithm is the so-called subspace estimator, and one popular algorithm of that category is called MUSIC (Multiple Signal Classification). The idea of this algorithm is to perform eigen decomposition on the covariance matrix ??xx :

            where ?? is a diagonal matrix containing eigenvalues and ?? containing the corresponding eigenvectors of ??xx .

            Assume that you are trying to estimate the angle of arrival for one transmitter with an ?? antenna linear array. It can be shown that the eigenvectors of ??xx either belong to so-called noise subspace or signal subspace. If the eigen values are sorted in ascending order, the corresponding ?? ? 1 eigen vectors span the noise subspace, which is orthogonal to the signal subspace. Based on the orthogonality information, you can calculate the pseudo spectrum ??:

            As in a classical beamformer, you loop through the desired values of ?? and find the maximum peak value of ??, which corresponds the angle of arrival (argument ??) you wish to measure.

            In an ideal case, MUSIC has excellent resolution in a good SNR environment and is very accurate. On the other hand, its performance is not very strong when the input signals are highly correlated, especially in an indoor environment. Multipath effects distort the pseudo-spectrum causing it to have maximums at the wrong locations. More information about the conventional beamformer and MUSIC estimators can be found from [3].

            Spatial Smoothing

            Spatial smoothing is a method for solving problems caused by multipathing (when coherent signals are present). It can be proven that the signal covariance matrix can be "decorrelated" by calculating an averaged covariance matrix using subarrays of the original covariance matrix. For a two-dimensional array, this can be written as the following

            where ??2 and ??2 are the number of subarrays in x- and y-directions respectively and ?????? stands for the (??, ??), which is the sub array covariance matrix. An example proof of this formula and more information can be found from [2]. The resulting covariance matrix can now be used as a "decorrelated" version of the covariance matrix and fed to the MUSIC algorithm to produce correct results. The downside of spatial smoothing is that it reduces the size of the covariance matrix, which further reduces the accuracy of the estimate.

            ?

            Other Locationing Technologies

            This section briefly presents two other locationing technologies for comparison. These two methods use different kinds of algorithms/methods for locationing than those presented in this paper. With Received Signal Strength Indicator (RSSI), the basic idea is to measure the signal strength of the received signal to get a distance approximation between RX and TX. This information can be used to trilaterate the position of a receiver device based on multiple distance measurements from different transmitter points. This technology requires only one antenna per device, but is not usually very accurate in an indoor environment. With Time of Arrival / Time of Flight (ToA/ToF), you measure the travel time of a signal between RX and TX and use that to calculate the distance between the ends. This distance is then used to trilaterate the position of the receiver. In ToA, all devices are time-synchronized. This technology also requires only one antenna per device, but, on the other hand, it requires very high clock accuracy to get reasonable positioning accuracies. There is also a variant of this technology called TDoA, where only the receiver devices need to be time-synchronized, and the estimation algorithms use the time difference for calculating position estimates.

            ?

            Conclusion

            Bluetooth Angle of Arrival and Angle of Departure are new emerging technologies that can be used to track assets as and for indoor positioning and wayfinding. These are phase-based direction finding systems that require an antenna array, RF switches (or a multi-channel ADC), and processing power to run the estimation algorithms. Designing a proper antenna array, as well as an angle estimation algorithm are essential for a RTLS system. Strong performing estimator algorithms are often not computationally cheap. Other positioning technologies include (but are not limited to) RSSI based methods and ToA based methods, but only phase-based AoA/AoD currently have a standardized framework in Bluetooth.



            Sources

            [1] H. Krim, M. Viberg, “Two Decades of Array Signal Processing”, IEEE Signal Processing Magazine, July 1996, pp. 67-94
            [2] Y.-M. Chen, “On Spatial Smoothing for Two-Dimensional Direction-of-Arrival Estimation of Coherent Signals”, IEEE Transactions on Signal Processing, Vol. 45, No. 7, July 1997
            [3] Z. Chen, G. Gokeda, Y. Yu, “Introduction to Direction-of-Arrival Estimation”, Artech House, 2010
            [4] N. A. Baig, M. B. Malik, “Comparison of Direction of Arrival (DOA) Esimation Techniques for Closely SpacedTargets”, International Journal of Future Computer and Communication, Vol. 2, No. 6, December 2013

            Silicon Labs

            Stay Connected With Us

            Plug into the latest on Silicon Labs products, including product releases and resources, documentation updates, PCN notifications, upcoming events, and more.
            • About Us
            • Careers
            • Community
            • Contact Us
            • Cookies
            • Corporate Responsibility
            • Investor Relations
            • Press Room
            • Privacy and Terms
            • Site Feedback
            Copyright ? Silicon Laboratories. All rights reserved.
            Also of Interest:
            • LOC-201: Locate your Things with Bluetooth...
            • Direction Finding
            • Bluetooth Location Services Solutions

            Your File Will Start Downloading Shortly

            Thank you for downloading .

            If you have any issues downloading, please contact sales support or product technical support.

            Close
            Loading Results
            Close

            Please select at least one column.

            感谢您访问我们的网站,您可能还对以下资源感兴趣:

            欧美色爱综合网_国产一区二区三区18|HD中文字幕在线播放
            • <fieldset id="yacme"><delect id="yacme"></delect></fieldset>
              • <noframes id="yacme"><dl id="yacme"></dl></noframes>
                <noframes id="yacme"><dl id="yacme"></dl></noframes>
                • <s id="yacme"><pre id="yacme"></pre></s>
                      <option id="yacme"><optgroup id="yacme"></optgroup></option>