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Our website address is: https://shipip.com.

What personal data we collect and why we collect it

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When visitors leave comments on the site we collect the data shown in the comments form, and also the visitor’s IP address and browser user agent string to help spam detection.

An anonymized string created from your email address (also called a hash) may be provided to the Gravatar service to see if you are using it. The Gravatar service privacy policy is available here: https://automattic.com/privacy/. After approval of your comment, your profile picture is visible to the public in the context of your comment.

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If you upload images to the website, you should avoid uploading images with embedded location data (EXIF GPS) included. Visitors to the website can download and extract any location data from images on the website.

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If you visit our login page, we will set a temporary cookie to determine if your browser accepts cookies. This cookie contains no personal data and is discarded when you close your browser.

When you log in, we will also set up several cookies to save your login information and your screen display choices. Login cookies last for two days, and screen options cookies last for a year. If you select "Remember Me", your login will persist for two weeks. If you log out of your account, the login cookies will be removed.

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Articles on this site may include embedded content (e.g. videos, images, articles, etc.). Embedded content from other websites behaves in the exact same way as if the visitor has visited the other website.

These websites may collect data about you, use cookies, embed additional third-party tracking, and monitor your interaction with that embedded content, including tracking your interaction with the embedded content if you have an account and are logged in to that website.

Analytics

Who we share your data with

How long we retain your data

If you leave a comment, the comment and its metadata are retained indefinitely. This is so we can recognize and approve any follow-up comments automatically instead of holding them in a moderation queue.

For users that register on our website (if any), we also store the personal information they provide in their user profile. All users can see, edit, or delete their personal information at any time (except they cannot change their username). Website administrators can also see and edit that information.

What rights you have over your data

If you have an account on this site, or have left comments, you can request to receive an exported file of the personal data we hold about you, including any data you have provided to us. You can also request that we erase any personal data we hold about you. This does not include any data we are obliged to keep for administrative, legal, or security purposes.

Where we send your data

Visitor comments may be checked through an automated spam detection service.

Your contact information

Additional information

How we protect your data

What data breach procedures we have in place

What third parties we receive data from

What automated decision making and/or profiling we do with user data

Industry regulatory disclosure requirements

The benefits of autonomous shipping technologies

In the wake of the COVID-19 pandemic, autonomous shipping could reduce contact in freightage, minimising the likelihood of contagion. Autonomous ships can also reduce human error, decrease crewing costs, increase the safety of aquatic life, and increase fuel efficiency. According to the International Chamber of Shipping (ICS), maritime vessels constitute 90% of all international trade, therefore autonomous innovation in shipping could revolutionise the sustainability and efficiency of the trade sector.

Globally, there are approximately 3,000 marine collisions each year, costing companies upwards of $20bn. Studies show that three quarters of collisions are due to human error – which current collision avoidance methods are not compensating for. With the introduction of autonomous shipping technologies, collisions will be dramatically reduced and potentially eliminated entirely.

Avoiding collisions with AI and machine learning

Machine learning avoidance systems can collect data based on position, speed, and route to suitably assess the risk of collision. Tel Aviv-based Orca AI is developing a collision avoidance system that is currently being piloted by several shipping companies. The technology combines Artificial Intelligence (AI) and data collection to create an awareness system that predicts hazards, alerting operators of impending collisions.

Another collision avoidance tool is being developed by Fujitsu Laboratories. In collaboration with the Japanese Coast Guard, Fujitsu are testing AI-based technologies to calculate the risk of collision and near-misses from traffic control rooms. “Using risk values calculated by Fujitsu’s technologies, operators can proactively detect vessels at risk and prioritise them. This will help in preventive planning while offering accurate information to vessels,” says Hiraku Fujimoto, manager of systems division IV, social systems unit at Fujitsu Limited.

Reducing fuel consumption with autonomy

Another method of using AI and machine learning techniques allows innovators to predict sea conditions, allowing ship captains to alter their fuel consumption. Scientists from Shell and the University of Southampton have trialled a new digital dashboard that predicts sea conditions whilst also interpreting the depth and angles of a ship to optimise the amount of fuel needed in any situation.

Whilst studying for her PhD, Amy Parkes from the University of Southampton developed this new modelling technique. She said: “Shell collects an enormous amount of data from these vessels and this app is designed to monitor and adapt to these variables to save power without changing the ship’s overall speed.”

Source: innovationnewsnetwork