{"id":5287,"date":"2022-09-29T13:09:15","date_gmt":"2022-09-29T05:09:15","guid":{"rendered":"https:\/\/ascendas-asia.com\/?page_id=5287"},"modified":"2022-09-29T13:24:39","modified_gmt":"2022-09-29T05:24:39","slug":"modeling-5g-millimeter-wave-beamformer-integrated-circuits","status":"publish","type":"page","link":"https:\/\/ascendas-asia.com\/th\/resources\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/","title":{"rendered":"Modeling 5G Millimeter Wave Beamformer Integrated Circuits"},"content":{"rendered":"<p class=\"add_font_color_mediumgray\">By Cecile Masse, Otava Inc.<\/p>\n<hr \/>\n<section>\n<div class=\"mainParsys parsys containsResourceName resourceClass-parsys\">\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<p>When designing phased array systems, RF engineers need to verify signal integrity and compliance with the 3GPP standard specifications as early as possible. At the same time, they must ensure that the design meets the practical needs of their customers in terms of phased array size, quality of the antenna pattern, and sensitivity to various parameter values.<\/p>\n<p>Once the antenna, beamformer devices, and transceiver hardware are assembled, engineers can run experiments in over-the-air (OTA) test chambers to characterize their design. However, it is often weeks\u2014or even months, depending on hardware and software development time, as well as product availability\u2014before all the pieces of the radio system become available.<\/p>\n<p>Our team has built a behavioral model of the Otava OTBF103 Beamformer Integrated Circuit (BFIC) that enables engineers to obtain essential performance information by running system-level simulations of their 5G millimeter wave system designs. The model can be simulated across eight transmit channels and eight receive channels in the 24 GHz to 40 GHz range, which spans numerous 5G NR bands. Engineers may combine the model with their own antenna models or use the antenna models included in the testbenches we provide. They can run simulations using their own Simulink<sup>\u00ae<\/sup><span>\u00a0<\/span>transceiver designs, transceiver models included in the testbench, or signal data captured from real-world RF systems.<\/p>\n<p>By running comprehensive bits-to-antenna simulations with the BFIC model, engineers can optimize and verify their system designs across a range of RF operating frequencies, variable gain amplifier (VGA) settings, phase shifter settings, and input\/out power levels\u2014all before committing to hardware or conducting over-the-air tests using an OTBF103 evaluation board (Figure 1). Once hardware is available, they can continue to use the model to further refine and verify their design.<\/p>\n<\/div>\n<\/div>\n<div class=\"cqImage containsResourceName section resourceClass-image\">\n<div class=\"row\">\n<div class=\"col-xs-12 col-sm-6\">\n<div class=\"clearfix mw-image thumbnail thumbnail_asset asset_overlay enlarge\">\n<p><a href=\"https:\/\/uk.mathworks.com\/content\/mathworks\/uk\/en\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.full.medium.jpg\/1660586712419.jpg\" data-footer=\"&lt;p&gt;Figure 1. The Otava OTBF103 evaluation board.&amp;nbsp;&lt;\/p&gt; \" data-toggle=\"lightbox\" class=\"add_margin_0\" style=\"box-sizing: border-box; background-color: transparent; color: #0076a8; text-decoration: none; margin-bottom: 10px; width: auto; display: block; float: left; position: relative;\"><img decoding=\"async\" src=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.full.medium.jpg\/1660586712419.jpg\" alt=\"The Otava O T B F 103 evaluation board. \" width=\"500\" height=\"439\" sizes=\"auto, (min-width: 1200px) 1140px, (min-width: 992px) 940px, calc(100vw - 30px)\" loading=\"lazy\" class=\"responsiveImage fluid_image remove_border\" srcset=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.150.medium.jpg\/1660586712419.jpg 150w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.320.medium.jpg\/1660586712419.jpg 320w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.480.medium.jpg\/1660586712419.jpg 480w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.620.medium.jpg\/1660586712419.jpg 620w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co.adapt.full.medium.jpg\/1660586712419.jpg 871w\" data-aem-src=\"\/content\/dam\/mathworks\/technical-article\/2022\/article-otava-fig1-evaluation-board.jpg\" \/><\/a><\/p>\n<div class=\"overlay_container\"><\/div>\n<div class=\"caption\">\n<p style=\"padding-left: 80px;\">\u00a0 \u00a0 \u00a0 \u00a0 \u00a0 \u00a0 \u00a0Figure 1. The Otava OTBF103 evaluation board.<\/p>\n<\/div>\n<\/div>\n<p>&nbsp;<\/p>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<h2>Building the BFIC Model<\/h2>\n<p>We began by modeling the transmitter channels, basing the model structure on the BFIC circuit-level behavior. Each TX signal path captures the behavior of the circuit\u2019s power splitter, phase shifter, variable gain amplifier, and output power amplifier, modeled using the RF Blockset\u2122 Power Divider, Phase Shift block, and nonlinear Amplifier block, respectively. The model is based on numerous measurement data sets, including complete S-parameters for the circuit\u2019s input and output ports, collected on the actual BFIC device. As a result, it accurately captures the response of the beamformer over a range of RF parameters, such as center frequency, phase shift, and gain operating point, as well as residual amplitude and phase error.<\/p>\n<p>After verifying a preliminary version of the model, we worked with MathWorks engineers to refine it. We restructured the model more efficiently, grouping impairments and nonlinearities distributed across several elements into one location (Figure 2).<\/p>\n<\/div>\n<\/div>\n<div class=\"cqImage containsResourceName section resourceClass-image\">\n<div class=\"row\">\n<div class=\"col-xs-12 col-sm-6\">\n<div class=\"clearfix mw-image thumbnail thumbnail_asset asset_overlay enlarge\">\n<p><a href=\"https:\/\/uk.mathworks.com\/content\/mathworks\/uk\/en\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.full.medium.jpg\/1660586712446.jpg\" data-footer=\"&lt;p&gt;Figure 2. The BFIC transmitter block (left) and its internal structure (right), including variable phase shift and variable gain amplifier elements.&lt;\/p&gt; \" data-toggle=\"lightbox\" class=\"add_margin_0\" style=\"box-sizing: border-box; background-color: transparent; color: #0076a8; text-decoration: none; margin-bottom: 10px; width: auto; display: block; float: left; position: relative;\"><img decoding=\"async\" src=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.full.medium.jpg\/1660586712446.jpg\" alt=\"The B F I C transmitter block and its internal structure, including variable phase shift and variable gain amplifier elements.\" width=\"919\" height=\"457\" sizes=\"auto, (min-width: 1200px) 1140px, (min-width: 992px) 940px, calc(100vw - 30px)\" loading=\"lazy\" class=\"responsiveImage fluid_image remove_border\" srcset=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.150.medium.jpg\/1660586712446.jpg 150w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.320.medium.jpg\/1660586712446.jpg 320w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.480.medium.jpg\/1660586712446.jpg 480w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.620.medium.jpg\/1660586712446.jpg 620w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_545279808.adapt.full.medium.jpg\/1660586712446.jpg 919w\" data-aem-src=\"\/content\/dam\/mathworks\/technical-article\/2022\/article-otava-fig2-bfic-transmitter-block-and-internal-structure.jpg\" \/><\/a><\/p>\n<div class=\"overlay_container\"><span class=\"icon-zoomin add_icon_color_white\"><\/span><\/div>\n<div class=\"caption\">\n<p style=\"padding-left: 40px;\">Figure 2. The BFIC transmitter block (left) and its internal structure (right), including variable phase shift and variable gain amplifier elements.<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<p>This grouping simplified the model, making it both easier to use and more computationally efficient. It also enabled us to protect our intellectual property, since the restructured model was less like the actual circuit implementation than the initial version had been.<\/p>\n<p>The complete BFIC model includes both transmitter and receiver blocks. The receiver block mirrors its transmitter counterpart, with input signals from eight antenna inputs passing through low-noise amplifiers, variable-gain amplifiers, and phase shifters.<\/p>\n<p>&nbsp;<\/p>\n<h2>Simulating 5G Millimeter Wave Designs<\/h2>\n<p>Otava customers can use our BFIC model in a variety of ways to evaluate their designs. For example, they can simulate not only classic CW RF performance characteristics like gain, IP3, and noise figure, but also apply 5G NR waveforms using the RF Measurement Testbench that we provide (Figure 3).<\/p>\n<\/div>\n<\/div>\n<div class=\"cqImage containsResourceName section resourceClass-image\">\n<div class=\"row\">\n<div class=\"col-xs-12 col-sm-6\">\n<div class=\"clearfix mw-image thumbnail thumbnail_asset asset_overlay enlarge\">\n<p><a href=\"https:\/\/uk.mathworks.com\/content\/mathworks\/uk\/en\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.full.medium.jpg\/1660586712473.jpg\" data-footer=\"&lt;p&gt;Figure 3. The RF Measurement Testbench.&lt;\/p&gt; \" data-toggle=\"lightbox\" class=\"add_margin_0\" style=\"box-sizing: border-box; background-color: transparent; color: #0076a8; text-decoration: none; margin-bottom: 10px; width: auto; display: block; float: left; position: relative;\"><img decoding=\"async\" src=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.full.medium.jpg\/1660586712473.jpg\" alt=\"Screenshot of the R F measurement testbench.\" width=\"459\" height=\"483\" sizes=\"auto, (min-width: 1200px) 1140px, (min-width: 992px) 940px, calc(100vw - 30px)\" loading=\"lazy\" class=\"responsiveImage fluid_image remove_border\" srcset=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.150.medium.jpg\/1660586712473.jpg 150w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.320.medium.jpg\/1660586712473.jpg 320w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.480.medium.jpg\/1660586712473.jpg 480w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.620.medium.jpg\/1660586712473.jpg 620w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1948149236.adapt.full.medium.jpg\/1660586712473.jpg 722w\" data-aem-src=\"\/content\/dam\/mathworks\/technical-article\/2022\/article-otava-fig3-rf-measurement-test-bench.jpg\" \/><\/a><\/p>\n<div class=\"overlay_container\"><span class=\"icon-zoomin add_icon_color_white\"><\/span><\/div>\n<div class=\"caption\">\n<p>\u00a0 \u00a0 Figure 3. The RF Measurement Testbench.<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<p>The default modulated signal is a 100 MHz OFDM signal. The simulation returns a number of key parameters for the radio designer to check compliance with 3GPP standards, such as integrated output power level, ACLR, error vector magnitude (EVM), and constellation diagram (Figure 4).<\/p>\n<\/div>\n<\/div>\n<div class=\"cqImage containsResourceName section resourceClass-image\">\n<div class=\"row\">\n<div class=\"col-xs-12 col-sm-6\">\n<div class=\"clearfix mw-image thumbnail thumbnail_asset asset_overlay enlarge\">\n<p><a href=\"https:\/\/uk.mathworks.com\/content\/mathworks\/uk\/en\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.full.medium.jpg\/1660586712500.jpg\" data-footer=\"&lt;p&gt;Figure 4. Single-channel ACLR plot and EVM for a standard 100 MHz OFDM signal.&lt;\/p&gt; \" data-toggle=\"lightbox\" class=\"add_margin_0\" style=\"box-sizing: border-box; background-color: transparent; color: #0076a8; text-decoration: none; margin-bottom: 10px; width: auto; display: block; float: left; position: relative;\"><img decoding=\"async\" src=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.full.medium.jpg\/1660586712500.jpg\" alt=\"Single-channel A C L R plot and E V M for a standard 100 MHz O F D M signal.\" width=\"843\" height=\"504\" sizes=\"auto, (min-width: 1200px) 1140px, (min-width: 992px) 940px, calc(100vw - 30px)\" loading=\"lazy\" class=\"responsiveImage fluid_image remove_border\" srcset=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.150.medium.jpg\/1660586712500.jpg 150w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.320.medium.jpg\/1660586712500.jpg 320w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.480.medium.jpg\/1660586712500.jpg 480w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.620.medium.jpg\/1660586712500.jpg 620w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_1201137222.adapt.full.medium.jpg\/1660586712500.jpg 998w\" data-aem-src=\"\/content\/dam\/mathworks\/technical-article\/2022\/article-otava-fig4-aclr-plot-and-evm.jpg\" \/><\/a><\/p>\n<div class=\"overlay_container\"><span class=\"icon-zoomin add_icon_color_white\"><\/span><\/div>\n<div class=\"caption\">\n<p>Figure 4. Single-channel ACLR plot and EVM for a standard 100 MHz OFDM signal.<\/p>\n<p>&nbsp;<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<p>We also provide testbenches for cosimulating the TX or RX BFIC models with an antenna array model. Users may start with these examples to see how their antenna design performs with the beamformer, validating the antenna radiation pattern, sidelobe or null levels, and Effective Isotropic Radiated Power (EIRP) at the target beam direction and under a variety of operating conditions (Figure 5). The provided Antenna Analysis Testbench implements an array of dipoles or circular patch antennas with Antenna Toolbox\u2122 for the simulation of polar directivity patterns, and calculation of the EIRP as a function of the RF center frequency and beam direction. Users may also modify the testbenches to put in their own custom antenna design, generated using either the MATLAB Antenna Designer application or antenna S-parameter data and a directivity profile extracted from an EM simulation tool.<\/p>\n<\/div>\n<\/div>\n<div class=\"cqImage containsResourceName section resourceClass-image\">\n<div class=\"row\">\n<div class=\"col-xs-12 col-sm-6\">\n<div class=\"clearfix mw-image thumbnail thumbnail_asset asset_overlay enlarge\">\n<p><a href=\"https:\/\/uk.mathworks.com\/content\/mathworks\/uk\/en\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.full.medium.jpg\/1660586712526.jpg\" data-footer=\"&lt;p&gt;Figure 5. Simulink model including the BFIC transmitter block and a dipole antenna array, with the simulated polar directivity pattern and EIRP (right).&lt;\/p&gt; \" data-toggle=\"lightbox\" class=\"add_margin_0\" style=\"box-sizing: border-box; background-color: transparent; color: #0076a8; text-decoration: none; margin-bottom: 10px; width: auto; display: block; float: left; position: relative;\"><img decoding=\"async\" src=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.full.medium.jpg\/1660586712526.jpg\" alt=\"Simulink model including the B F I C transmitter block and a dipole antenna array, with the simulated polar directivity pattern and E I R P.\" width=\"687\" height=\"329\" sizes=\"auto, (min-width: 1200px) 1140px, (min-width: 992px) 940px, calc(100vw - 30px)\" loading=\"lazy\" class=\"responsiveImage fluid_image remove_border\" srcset=\"https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.150.medium.jpg\/1660586712526.jpg 150w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.320.medium.jpg\/1660586712526.jpg 320w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.480.medium.jpg\/1660586712526.jpg 480w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.620.medium.jpg\/1660586712526.jpg 620w, https:\/\/uk.mathworks.com\/company\/newsletters\/articles\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/_jcr_content\/mainParsys\/image_0_copy_copy_co_120438993.adapt.full.medium.jpg\/1660586712526.jpg 687w\" data-aem-src=\"\/content\/dam\/mathworks\/technical-article\/2022\/article-otava-fig5-simulink-model-with-transmitter-block-and-dipole-antenna-array.jpg\" \/><\/a><\/p>\n<div class=\"overlay_container\"><span class=\"icon-zoomin add_icon_color_white\"><\/span><\/div>\n<div class=\"caption\">\n<p>Figure 5. Simulink model including the BFIC transmitter block and a dipole antenna array, with the simulated polar directivity pattern and EIRP (right).<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"text containsResourceName section resourceClass-text\">\n<div class=\"mw-text\">\n<h2><\/h2>\n<h2>Planned Enhancements<\/h2>\n<p>While the offered OTBF103 model is already quite complete for any RF signal chain analysis, we are planning improvements for future versions based on the device\u2019s current and future capabilities. One enhancement under consideration is the addition of multi-bias control. Adding bias control enables engineers to evaluate how their systems perform at reduced power levels. Power consumption has become an important design parameter in 4G cellular radios\u2014even more so in multichannel 5G cellular infrastructure equipment. Understanding how a device may be used to save power under lower traffic load is paramount, and it is important for the model to capture that aspect of device behavior. We also plan to reuse the current model, adapting it to reflect the behavior of upcoming beamformer ICs that are under development.<\/p>\n<p>In the short term, we\u2019ll be offering an end-to-end, over-the-air analysis testbench connecting two MIMO systems. This testbench will be an extension of our antenna array testbenches, making it possible to model a full radio link with beamforming. This setup will account for any custom path loss and allow for signal budget analysis as a function of TX-to-RX beam alignment.<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/section>\n<div>\n<div class=\"aboutTheAuthor abouttheauthor containsResourceName resourceClass-abouttheauthor\"><\/div>\n<\/div>\n<p class=\"pull-right\"><small>Published 2022<\/small><\/p>\n<p>&nbsp;<\/p>\n<p><a class=\"maxbutton-4 maxbutton maxbutton-download-a-free-trial\" target=\"_blank\" rel=\"noopener\" href=\"https:\/\/ascendas-asia.com\/th\/matlab-trial-for-wireless-communication\/\"><span class='mb-text'>Download a FREE Trial<\/span><\/a>\u00a0 \u00a0 \u00a0 \u00a0 \u00a0 \u00a0<a class=\"maxbutton-1 maxbutton maxbutton-get-quote\" target=\"_blank\" rel=\"noopener\" href=\"https:\/\/ascendas-asia.com\/th\/company\/#contact-us\"><span class='mb-text'>Request Consultation<\/span><\/a><\/p>","protected":false},"excerpt":{"rendered":"<p>By Cecile Masse, Otava Inc. When designing phased array systems, RF engineers need to verify signal integrity and compliance with the 3GPP standard specifications as early as possible. At the same time, they must ensure that the design meets the practical needs of their customers in terms of phased array size, quality of the antenna [&hellip;]<\/p>","protected":false},"author":4,"featured_media":0,"parent":18,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"content-type":"","footnotes":"","_links_to":"","_links_to_target":""},"class_list":["post-5287","page","type-page","status-publish","hentry"],"yoast_head":"<!-- This site is optimized with the Yoast SEO Premium plugin v22.1 (Yoast SEO v27.7) - https:\/\/yoast.com\/product\/yoast-seo-premium-wordpress\/ -->\n<title>Modeling 5G Millimeter Wave Beamformer Integrated Circuits - TechSource Systems &amp; Ascendas Systems Group<\/title>\n<meta name=\"description\" content=\"A convolutional neural network (CNN or ConvNet), is a network architecture for deep learning which learns directly from data\" \/>\n<meta name=\"robots\" content=\"index, follow, max-snippet:-1, max-image-preview:large, max-video-preview:-1\" \/>\n<link rel=\"canonical\" href=\"https:\/\/ascendas-asia.com\/th\/resources\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/\" \/>\n<meta property=\"og:locale\" content=\"th_TH\" \/>\n<meta property=\"og:type\" content=\"article\" \/>\n<meta property=\"og:title\" content=\"Modeling 5G Millimeter Wave Beamformer Integrated Circuits\" \/>\n<meta property=\"og:description\" content=\"A convolutional neural network (CNN or ConvNet), is a network architecture for deep learning which learns directly from data\" \/>\n<meta property=\"og:url\" content=\"https:\/\/ascendas-asia.com\/th\/resources\/modeling-5g-millimeter-wave-beamformer-integrated-circuits\/\" \/>\n<meta property=\"og:site_name\" content=\"TechSource Systems &amp; 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