An article understands the latest development of intelligent driving in LI.

  Recently, the first Ideal Home Technology Day was held in Changzhou Intelligent Manufacturing Base, LI. Under the guidance of "dual-energy strategy", LI has made important breakthroughs in the research and development of smart space, intelligent driving and high-voltage pure electric platform. The ideal SS intelligent space with Mind GPT as the core and the ideal AD intelligent driving which will open the city NOA internal test this month have entered the era of large model at the same time. The ideal 800V high-voltage pure electric platform supporting 5C charging will open the 5G era of charging speed.

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  The ideal AD Max 3.0, which entered the era of big model, is growing and iterating at an unimaginable speed in the past. At the product level, the urban NOA function that does not rely on high-precision maps will be delivered to the internal test users in Beijing and Shanghai, so that users can have an ever-evolving "AI driver". In the second half of the year, the commuting NOA function will be opened to users, so that users can have their own "exclusive elevator", making commuting easier and more convenient. On the technical level, AI big model technology is used to deal with all the challenges in the scene, and all the problems can be efficiently iterated and finally solved.

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  Perception algorithm: like people, it does not depend on maps and recognizes everything.

  The core of not relying on high-precision maps is to use BEV model to perceive and understand the road structure information in the environment in real time. Through a lot of training, the current BEV model has been able to generate stable road structure information in real time at most roads and intersections.

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  For complex intersections, the method is to use the self-developed NeuralPriorNet network (NPN network for short) to extract NPN features of intersections in advance. When the vehicle drives to the intersection again, the previously extracted NPN features are taken out and fused with the BEV feature layer of the vehicle-side perception model, and a perfect perception result is obtained.

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  The NPN feature is a bunch of neural network parameters, from which humans can’t directly understand the complex intersection shape, but the large model can. Compared with high-precision maps, NPN features have more information and higher confidentiality. It uses network model instead of artificial rules to understand and use environmental information.

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  It is not enough to understand the intersection. "AI drivers" have to understand the traffic rules of traffic lights at intersections, which is another difficulty of urban roads. The mainstream approach is to establish a set of rules and algorithms for traffic intentions of traffic lights and roads, but the ideal is to choose a large model to solve it.

  An end-to-end TrafficIntentionNet network (TIN network for short) is ideally trained. There is no need to set any rules artificially, or even to identify the specific location of traffic lights. As long as the image and video are input into the TIN network model, the network can directly give the result of how the vehicle should go now — — Turn left and right, go straight or stop waiting. By learning the reaction of a large number of human drivers to the change of traffic lights at intersections, the TIN network model is trained, and good results are obtained.

  As shown in the following figure, at the intersection, the TIN network gives the probability of different traffic intentions at the intersection in real time according to the input video image, and the maximum probability value is the actual use intention, which is completely consistent with the indication of the signal light. When the red light is on, the network output waiting probability value is the maximum, and the vehicle keeps waiting. When the green light is on, the left turn probability of the network output increases to the maximum, and the vehicle starts to turn left. Although the result looks simple, the technology behind it is very advanced.

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  In the face of common obstacles that may appear on the road, such as construction roadblocks, scattered objects, goods protruding from the back of trucks, etc., Occupancy network is used to accurately identify their boundaries and types. In recent months, the ideal Occupy network has been iterated wildly, and a lot of training miles have been "fed", and the content and accuracy of recognition have been greatly improved.

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  Regulation algorithm: free control like a human.

  In order to make "AI drivers" make reasonable judgments like human drivers in driving decisions and trajectories, it is ideal to apply imitation learning method to the planning and control algorithm, and train a large number of drivers’ driving behaviors, so that the decision-making and planning of urban NOA can make judgments more like human drivers on the premise of ensuring safety and conforming to traffic rules.

  For example, when the vehicle needs to turn right, according to the traffic rules, you can choose either of the two lanes after turning right to merge. However, by observing a large number of human driving trajectories, it is found that more than 90% users will take the right second lane instead of the right first lane, because the safety and efficiency of the right first lane are not as good as that of the right second lane directly, and the turning radius of the right second lane is larger, the turning process is more stable, and the family will be more comfortable. Therefore, the final result of the model’s learning and training at this intersection is also inclined to take the right two lanes.

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  Training platform: continuous evolution like human beings.

  The evolution of large-scale model needs a powerful basic training platform to complete fast and efficient training and iteration. Ideal started the construction of training platform very early. Up to today, it has grown into an autonomous driving training cluster with 1200 PFLOPS computing power, and the mileage of autonomous driving training has exceeded 600 million kilometers.

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       Urban NOA open logic

  Whether a city can open the use of NOA mainly depends on the completion of NPN characteristics of complex intersections in the city. By counting the R&D platforms covered by NPN in cities, we can see the coverage of NPN now, and each point above represents a complex intersection that needs to make NPN features. Among them, green represents the NPN feature of the intersection, which has passed the test and verification and is available, red represents the NPN feature but needs to be verified, and gray represents no NPN feature. At present, there are many red NPN characteristic points all over the country, and there are many green NPN intersections in Beijing and Shanghai where early birds and test cars appear frequently. Next, after the early bird users join, these spots will turn green faster and faster, which means that more and more cities are open.

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  The commute you need more, NOA

  Commuting to and from work is usually the most tiring time of the day and the time when driving assistance is most needed. If this road can be opened by NOA, it will solve the big problem. Therefore, it is ideal to introduce commuter NOA products that everyone needs more. With commuting NOA, you don’t need to wait for the NPN features of the whole city to be trained. You just need to set your own commuting route and learn NPN features by car, and you can use NOA functions on this route after learning. If you commute every day, the simple route can be activated within one week, and the more complicated route is expected to be enough to complete the training in 2-3 weeks.

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  It is estimated that commuting NOA can cover more than 95% of the commuting scenes of ideal car owners. During the use of NOA for commuting, each model will continue to be iteratively trained, and the better it is, the better the experience will be. With commuting NOA, it is like having your own "exclusive elevator" on the way to and from work, which is definitely the NOA function you need now.

  This month, the ideal will open the NOA internal test of cities in Beijing and Shanghai, and early bird users can take the lead in using the NOA function of cities. In the second half of the year, it is ideal to open the commuting NOA function and more NOA areas in cities, so that every early bird user can use NOA navigation to assist driving during daily commuting.

  All these are the advanced achievements brought by AI big model technology. Through the leading technical architecture and excellent iterative efficiency, AD Max 3.0 platform will gradually meet the needs of all cities and users to use NOA functions on urban roads. When commuter NOA and urban NOA expand on a large scale, it will be a "just-needed configuration" for mid-to high-end cars that can’t be sold well without equipment. (Photo courtesy of LI)

Zeng Taiyuan | "loong" jumped into the Oxford English Dictionary.

Perhaps it is purely coincidental, but I believe it is intentional, deliberate and then move. In January 2024, on the eve of year of the loong, the Oxford English Dictionary (OED), a treasure house of English words, showed obvious movement, and turned its attention to China again after many years. The English word "loong" awoke from hibernation, opened his eyes and got up, ready to rise.
For the first time in history, Chinese dragon (loong) has been included in the brand English dictionary, and it is also OED, a recognized word authority in the English-speaking world. Chinese dragon has gone through lexicalization, from loose free combination to tight fixed collocation, and it has been loaded into dictionaries and become a justified lexical unit.
Bronze Dragon with Gold Core in Tang Dynasty Collected in Shaanxi History Museum
The voluminous OED published its first edition in 1928, positioning itself as "the most authoritative record of English language". The second edition was launched in 1989, with a total of 20 volumes. After that, three small volumes of Addendum Series of Oxford English Dictionary were published one after another, adding new words and meanings and revising existing contents. In 2000, OED integrated the second edition and the addendum series, and launched a paid online edition. Since then, OED has gone online and updated online every quarter, providing readers with some results of the third edition under editing.
OED was updated in the fourth quarter of 2023 and was not officially launched until January 2024. Among them, the new entry, Chinese dragon, is complete and comprehensive in content, including pronunciation, etymology, definition, documentary evidence (quotation, a written example with a source), cross reference (two words are complementary to each other), and the collection history of entries (time information shows that Chinese dragon was first published in December 2023). Prior to this, Chinese dragon was not included in the traditional brand dictionaries in the English-speaking world, and it was only mentioned in the definitions or examples of other terms at most.
Chinese dragon has two definitions in OED. The first one focuses on the physical entity, which refers to the image or statue of loong, and the second one focuses on the psychological projection, which refers to the animals in China mythology, covering the first definition. The following is the second definition of Chinese dragon, which is rich in content and three-dimensional:
A mythological creature or god associated with China,depicted in a variety of different animal forms but typically as a serpent with four limbs, And symbolizing wisdom, fortune, and power. Also: such a creative viewed as a personification of China or its former empire. (The god beast or spirit related to China is depicted as various animal forms, but it is basically a four-legged snake, symbolizing wisdom, fate and power. In addition, this beast is also regarded as the embodiment of China or the former empire)
OED’s documentary evidence shows that as early as 1754, the Chinese dragon group had appeared in the literature, and the Italian Letter written by Earl Irish aristocracy Orie. The latest documentary evidence is taken from the English Shanghai Daily on August 7, 2013:
The Chinese dragon is the greatest symbol of power and good fortune and no traditional festival is complete without an undetermined dragon dance. (loong is the grandest symbol of power and luck, and traditional festivals are complete only with undulating dragon dances.).
Before Chinese dragon became an independent word, the English translation of "dragon" was generally based on bare dragon. However, the traditional dragon in the West is the embodiment of evil, and its negative image is deeply rooted in people’s hearts. OED defines dragon as follows: "The mythical monster is a giant and terrible reptile, which often combines the body structure of snakes and crocodiles, with strong claws, like beasts or raptors, scales and wings, and can breathe fire sometimes."
Tang Chi Jin Zou Long Shaanxi History Museum
Loong looks like a dragon in the west, but there are key differences. That’s why English adds Chinese decoration in front of dragon to define and distinguish it. This Chinese dragon group appeared in written records in the middle of the 18th century, which indicated that English speakers at that time had realized the differences between loong and Western Dragons.
Loong is different from the Western Dragon, which is clearly reflected in the other two large authoritative dictionaries. One is Webster’s Third Edition New International English Dictionary published in 1961, which is a very large single-volume modern English dictionary published in the United States. Webster’s does not include Chinese dragon, but the definition of dragon gives loong a meaning, saying that it is a beneficial supernatural creation in Chinese mythology connected with rain and floods (a miraculous animal in China mythology, kind and generous, related to rain and floods).
The second is the New Oxford English Dictionary published in 1998, which is a large-scale single-volume modern English dictionary based on corpus, and has nothing to do with OED. Chinese dragon is not included in New Oxford either, but in the definition of dragon, loong’s goodness and auspiciousness are pointed out: in East Asia, the dragon is naturally a beneficial symbol of fertility, associated with water and the treasures. (In East Asia, dragons are mostly kind and generous, symbolizing wealth, which is related to water and heaven).
What these two large authoritative modern English dictionaries reveal is that even though loong has no other entries and is included separately, the semantics of dragon has been divided, which clearly shows that the dragon of western traditional culture is one piece, and the dragon of China traditional culture is another piece, which is related to each other but different. Dictionaries reflect the current situation of language, which means that such cognition has a sufficient mass base in the English world.
Some theorists believe that translating China’s dragon into English is a huge mistake, which must be dealt with seriously and corrected thoroughly. Now, it seems that it is no longer necessary. All kinds of evidence show that dragon can also refer to loong, which is different from the Western Dragon. If there are doubts about semantics and the context is ambiguous, it must be made clear that this dragon is loong, and it can be easily resolved by putting Chinese before Dragon. The literature also shows that Chinese dragon has been used for more than 200 years, and the relevant evidence of various corpora is overwhelming. On the eve of year of the loong, Jiachen was certified and included by OED, so it should be no problem to translate China dragon into Chinese dragon.
Of course, if the English of "long" wants to find another way, it is also a way worth trying with the help of the transliteration of Long. Dragon is one of the core features of Chinese culture, and the English translation of cultural characteristic words is always based on phonetics, which is universally applicable. Transliteration highlights the main body of culture and expresses cultural self-confidence. However, English as a non-native language is not our decision, and it is only effective if it is widely recognized by English speakers. This road is long.
Author: Zeng Taiyuan
Text: Zeng Taiyuan Professor, English Department, Shanghai Sanda University Researcher, Corpus Application and Research Center Photo: Editor: Chen Shaoxu Editor: Li Chunyi
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