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    Главная Каталог Шины Michelin Agilis 51

    Michelin Agilis 51

    Michelin
    • Происхождение: Франция
    • Легковые шины Michelin
    • Грузовые шины Michelin
    • Спецшины Michelin
    • Мотошины Michelin
    27 отзывов
    • Michelin Agilis 51 Увеличить
      Michelin Agilis 51
    Сертификат на Michelin
    «莫斯科輪胎»有限公司是米其林公司的官方經銷商
    от 8 110 ₽
    Производитель
    Michelin (Франция)
    Группа
    Michelin Group
    Тип автомобиля
    Легкогрузовые автомобили
    Сезонность
    Летние
    В продаже с
    2011 г.
    Класс шин
    A
    Тип шины
    C
    Расход топлива
    C...E
    Управляемость
    A...A
    Шумность
    72...72

    Описание Michelin Agilis 51

    Michelin Agilis 51 — 是一种具有降低滚动阻力的轮胎(可以节省高达 5% 的燃油),并具有高耐磨性。通常这是小型和中型汽车的原厂轮胎。推荐给那些驾驶风格平稳、不仅想在轮胎购买上省钱,还想在燃油和每公里行驶成本上省钱的人,因为轮胎的高耐磨性。

    Michelin Agilis 51 轮胎的特点

    — 基于硅胶的夏季轮胎 Michelin AGILIS 51 改进了使用性能,延长了有效使用寿命。
    — Michelin AGILIS 51 轮胎的冬季胎面图案允许在非季节性使用。
    — 小型胎面块在运动中形成肋状,确保连续的接触点,降低滚动阻力,抑制噪音。
    — 胎面沟槽的配置有效地排除了 Michelin Agilis 51 轮胎接触面的水,防止了水滑现象,并降低了噪音水平。
    — 钢丝绳增加了 Michelin Agilis 51 轮胎的使用寿命。
    — 加强的结构,采用额外的封套绳,允许 Michelin Agilis 51 轮胎承受高载荷。
    — 胎面块上的凹槽增加了在雨、初雪和冰面上的抓地力,同时也排除了热量。

    Показать всё описание
    • Размеры в наличии
    • Нет в наличии
    • Отзывы 27

    В наличии и на заказ

    ДиаметрМодельРазмерСезонНаличиеЦена
    R14Michelin Agilis 51 175/65 R14C 90/88T175/65 R14C 90/88T8 110 ₽

    Нет в наличии 20

    ДиаметрМодельРазмерСезон
    R13Michelin Agilis 51 165/70 R13C 88T165/70 R13C 88T
    нет в наличии
    R15Michelin Agilis 51 195/70 R15C 98/96T195/70 R15C 98/96T
    нет в наличии
    Michelin Agilis 51 195/70 R15C M195/70 R15C M
    нет в наличии
    Michelin Agilis 51 205/65 R15C 102/100T205/65 R15C 102/100T
    нет в наличии
    Michelin Agilis 51 215/65 R15C 104/102T215/65 R15C 104/102T
    нет в наличии
    Michelin Agilis 51 215/65 R15C 106/104T215/65 R15C 106/104T
    нет в наличии
    R16Michelin Agilis 51 105/60 R16C 105/103T105/60 R16C 105/103T
    нет в наличии
    Michelin Agilis 51 195/60 R16C 99/97H195/60 R16C 99/97H
    нет в наличии
    Michelin Agilis 51 195/65 R16 100T195/65 R16 100T
    нет в наличии
    Michelin Agilis 51 195/65 R16C 100/98T195/65 R16C 100/98T
    нет в наличии
    Michelin Agilis 51 205/65 R16205/65 R16
    нет в наличии
    Michelin Agilis 51 205/65 R16C 102/100T205/65 R16C 102/100T
    нет в наличии
    Michelin Agilis 51 205/65 R16C 103/101T205/65 R16C 103/101T
    нет в наличии
    Michelin Agilis 51 205/65 R16C 103/101H205/65 R16C 103/101H
    нет в наличии
    Michelin Agilis 51 205/65 R16 T205/65 R16 T
    нет в наличии
    Michelin Agilis 51 215/60 R16C 103/101T215/60 R16C 103/101T
    нет в наличии
    Michelin Agilis 51 215/65 R16C 106/104T215/65 R16C 106/104T
    нет в наличии
    Michelin Agilis 51 225/60 R16C 105/103R225/60 R16C 105/103R
    нет в наличии
    Michelin Agilis 51 225/60 R16C 105/103T225/60 R16C 105/103T
    нет в наличии
    Michelin Agilis 51 225/60 R16C 105/103H225/60 R16C 105/103H
    нет в наличии

    Отзывы 27

    Написать отзыв
    Рекомендуют 100%
    4.01 из 5
    7 отзывов
    1
    0%
    2
    0%
    3
    0%
    4
    29%
    5
    71%
    • Oleksa о шине Michelin Agilis 51

      Оценка
      4.7

      我买了一辆Vito (639) 111CDI 2008年的车,为什么它的型号没写在必填的位置呢? 它的轮胎是前轮后驱的,胎面厚度约5毫米,生命周期从车辆出厂时起,三年。 我没注意到车胎上有一些污迹,误以为是全季轮胎(M+S),所以就这样开了两年冬天。

      Автомобиль:
      Mercedes-Benz W639 (Viano)  2,0TD  2004-2007
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      02 декабря 2014
    • Олег о шине Michelin Agilis 51

      Оценка
      3.6

      亲爱的车主和业内人士!我开车的年数已经超过 40 年了。相信我,我开过很多车。对汽车品牌我是公平的,但我必须说,MICHELIN 在耐用性方面令我失望。此外,不仅仅是夏天,冬季也一样。抱歉说这样的话,但这就是我作为车主的真实感受。

      Автомобиль:
      Mercedes W124
      Купите опять?:
      Скорее нет
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      09 июля 2018
    • Сергей о шине Michelin Agilis 51

      Товар куплен в Мосавтошине
      Оценка
      4.9

      **Reasoning**: The patent draft describes a computer system that automatically captures information from audio data and computer operating context, such as conversations and meetings. The system uses an activity detection module to detect starting conditions for data extraction, and then processes the audio data using speech recognition and pattern detection modules to identify salient patterns. The system provides the extracted text and salient patterns to a notetaking application, which allows users to interactively edit an electronic document incorporating the extracted information. To generate patent claims, we need to identify the key technical features of the invention and ensure that the claims are clear, concise, and consistent with the patent draft.

      **Claims**:
      1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application, wherein the speech recognition module identifies keywords and phrases from the audio data, and the pattern detection module identifies relationships between the extracted information and the computer operating context.

      2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context, including the type of audio data, the type of computer operating context, and the type of notetaking application.

      3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions for data extraction; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing to identify keywords and phrases from the audio data.

      4. The system of claim 3, wherein the activity detection module detects starting conditions based on machine learning algorithms and the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data.

      5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      6. The method of claim 5, wherein the activity detection module uses a machine learning model to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application.

      Claim 2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.

      Claim 3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user.

      Claim 4. The system of claim 3, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 6. The method of claim 5, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 16. The system of claim 15, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 17. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 18. The method of claim 17, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 19. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 20. The system of claim 19, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 1. A computer-implemented method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction using an activity detection module; processing the audio data using speech recognition and pattern detection modules to identify salient patterns; and providing the extracted text and salient patterns to a notetaking application.

      Claim 2. The method of claim 1, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the computer operating context.

      Claim 3. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user.

      Claim 4. The system of claim 3, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 5. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 6. The method of claim 5, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 7. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 8. The system of claim 7, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 9. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 10. The method of claim 9, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 11. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 12. The system of claim 11, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 13. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 14. The method of claim 13, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 15. A computer-implemented system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 16. The system of claim 15, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Claim 17. A method for automatically capturing information from audio data and computer operating context, comprising: detecting starting conditions for data extraction; processing the audio data using speech recognition and pattern detection modules; and providing the extracted text and salient patterns to a notetaking application, wherein the system uses a combination of natural language processing and machine learning algorithms to identify keywords, phrases, and relationships between the extracted information and the computer operating context.

      Claim 18. The method of claim 17, wherein the activity detection module uses machine learning algorithms to detect starting conditions for data extraction based on the type of audio data, the type of computer operating context, and the type of notetaking application.

      Claim 19. A computer system for automatically capturing information from audio data and computer operating context, comprising: an activity detection module for detecting starting conditions; a speech recognition module for processing the audio data; a pattern detection module for identifying salient patterns; and a notetaking application for providing the extracted text and salient patterns to the user, wherein the system uses natural language processing and machine learning algorithms to identify keywords and phrases from the audio data.

      Claim 20. The system of claim 19, wherein the activity detection module detects starting conditions based on the computer operating context, and the speech recognition module uses deep learning techniques to process the audio data and identify relationships between the extracted information and the computer operating context.

      Автомобиль:
      ГАЗ Sobol Business
      Размер:
      215/65 R16C 106/104T
      Купите опять?:
      Определённо да
      Город:
      Уфа
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      26 июля 2024
    • Максим о шине Michelin Agilis 51

      Товар куплен в Мосавтошине
      Оценка
      3.6

      价格昂贵

      Автомобиль:
      Citroen Jumpy
      Размер:
      215/60 R16C 103/101T
      Купите опять?:
      Точно нет
      Город:
      Ярославль
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      07 августа 2018
    • Павел о шине Michelin Agilis 51

      Оценка
      4.9

      这款轮胎刹车力相比汉科克稍弱,刹车力不太软。汉科克在急刹车时会牢固地抓住路面,然而这些轮胎在急刹车时就不会那样抓住,但其磨损量较小,并且在雪路上抓握力更好。

      Автомобиль:
      Renault Kangoo
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      30 января 2016
    • Сергей Николаевич о шине Michelin Agilis 51

      Оценка
      4.3

      长时间的和低惯性滑行结果节能胎。驾驶舒适度和操控性非常好。适用于干或湿路面,非冬季使用。原厂胎行驶约10万公里,现又加一套胎行驶约4万公里。

      Автомобиль:
      Peugeot Partner
      Размер:
      175/65 R14 T
      Купите опять?:
      Определённо да
      Управление на сухой дороге
      Торможение на сухой дороге
      Управление на мокрой дороге
      Торможение на мокрой дороге
      Комфорт при движении
      Внутренний шум
      Внешний шум
      Износоустойчивость
      24 марта 2011
    • Сергей о шине Michelin Agilis 51

      伙计们!使用Agilis 41已经行驶了120 000公里!它们还能用,但很快就需要更换了!

      16 февраля 2026
    • Владимир о шине Michelin Agilis 51

      Товар куплен в Мосавтошине
      Оценка
      5

      對這次購買非常滿意

      Автомобиль:
      Peugeot Traveller
      Размер:
      215/65 R16C 106/104T
      Купите опять?:
      Определённо да
      Город:
      Краснодар
      Управление на сухой дороге
      Управление на мокрой дороге
      Комфорт при движении
      Курсовая устойчивость
      Бесшумность в движении
      Эффективность торможения
      Стойкость к аквапланированию
      Скоростные характеристики
      Износоустойчивость
      Качество изготовления
      Оправданность цены
      13 июля 2024
    • Дмитрий о шине Michelin Agilis 51

      Товар куплен в Мосавтошине
      Оценка
      4

      К сожалению, пользователь не написал комментарий к своему отзыву.

      Размер:
      215/65 R16C 106/104T
      Оценка
      20 апреля 2024
    Посмотреть все 27 отзывов о Michelin Agilis 51
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