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The large network (of small world graph type) I wish to deal with is dynamic in nature, new nodes are added and subtracted frequently. Presumably using D* over A* would be a better way to detect paths in this dynamic environment?

How solid is D*? has it had any real world experience? like a cryptographic algorithm - is D* hardened by lots of peer review and testing? Would you use D* for this problem?

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but lets hear a detailed explanation for the layman – Setori Oct 23 '08 at 5:59
I think the closest you are going to get is going to be to read the pseudo-code and the accompanying explanation in the original whitepaper for D* that I linked to. It is in pretty "layman" terms.. but you won't be able to understand D* without ~some~ graph theory background. – Simucal Oct 23 '08 at 17:23
up vote 14 down vote accepted

As I understand, the first time you run D* it finds the same path as A* with nearly the same runtime. However, when a node changes it's edge value or nodes are added A* recomputes ALL of the path while D* simply recomputes the inconsistent nodes the second time around rather than the whole thing.

Anthony Stentz's D* algorithm (original whitepaper here) has largely been deprecated by derivatives of his work. D* Lite and LPA* are the most commonly found and are much easier to code/implement.

As far as real world experience, Joseph Carsten and Art Rankin from NASA's Jet Propulsion Laboratory installed a version of Field D* using elements of D* Lite on the mars rovers "Spirit" and "Opportunity" (slideshow of rovers using D* here). In Feburary 2007 it was used to fully navigate the mars rover autonomously.

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Apparently D* is really useful in the robotics domain because the robots on-board sensors are constantly re-evaluating edge values. That would make it pretty "battle tested" in my own opinion.

Similarly, I found another whitepaper that mentions the use of the D* Lite algorithm in Mobile Gaming.

I'll end this answer by stating that I've never implemented D* before, only A*. Because of the significant increase in complexity I would say that D* (or D* Lite) should only be used in cases where there is a significant and frequent changes in the graph. You described your situation as being similar to that so I would say definately go for D* Lite. If NASA uses it you could safely bet it has been thoroughly investigated.

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+1 See also here – BlueRaja - Danny Pflughoeft Jun 28 '12 at 16:35
You said that D* should be used when there is a frequent change in the graph. Does this means that D* shouldn't be used if the graph doesn't change at all?? – Alaa Aug 4 '14 at 13:09

I have implemented both D* and A* algorithm. So, I advice you that, if your map has no dynamic obstacles, you should implement A*. Else, implement D*. For the main reason is: At the first search, D* calculates all nodes in the map, then shows you the shortest path, while A* only calculates a limited area around goal and start points in the map. So, it is much faster than D*. In dynamic environment, D* is faster and more efficient than A*. Because on the way robot goes, if it detects a new obstacle, it only updates a few nodes around the unexpected obstacle. While, A* will calculates again all things.

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